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  1. Home
  2. Docs
  3. Virtual Assistants
  4. Builder
  5. Dialog Task
  6. Entity Types

Entity Types

The Entity Type provides the NLP Interpreter with the expected type of data from a user utterance to enhance recognition and system performance.  The Kore.ai NLP interpreter extracts the entity from the user utterance. If the user does not enter a required entity, you can define a virtual assistant Response node to prompt the user to provide the entity. For more information, refer to Working with the Confirmation Node.

You can also define entity rules to validate user input, refer here for details.

The following Entity Types are specified for an entity node.

Address Composite Person Name
Airport Date Percentage
Attachment Date Period Phone Number
Email Date Time Quantity
City Description String
Country List of Items (enumerated) Time
Company List of items (lookup) Time Zone
Color Location URL
Custom Number Zip Code
Currency

Address

Captures addresses written in the standard US and Germany address formats. For example, 200 E Main ST Pheonix AZ 85123 USA. The complete address is captured as a string: “200 E Main ST Pheonix AZ 85123 USA.” In addition to this string, the Address entities like City, Country, and Zip Code also provide the full formatted address that has been captured.

"entities":
{
"AddressEntity": "200 E Main ST Pheonix AZ 85123 USA"
}

For other country addresses, the platform captures strings that end with a recognizable city or country name. For more details, please refer to the City entity.

Airport

Captures airport details with the following inputs:

  • City name
  • Airport name
  • IATA code
  • ICAO
  • Abbreviations of US cities.

Airport details are returned as a JSON entity with the elements shown below:

"AirportEntity":
  {"IATA": "LHR",
   "AirportName": "London Heathrow Airport",
   "City": "London",
   "ICAO": "EGLL",
  }

We use https://github.com/opentraveldata/opentraveldata for all the airport details.

Input Description Examples
City
name
Identifies the airport name from the city name in the user utterance. If the city has multiple airports, shows the list of airports to choose from. Utterance: Flying to Los Angeles
Response: The airport you entered seems to be ambiguous. Tell me the option you would like to choose.
<Names of five airports in Los Angeles>
Airport name Identifies the airport name from full airport name or partial name with the prominent keyword. Utterance: Flying to Heathrow
Captured: London Heathrow Airport with the necessary details in the virtual assistant.
IATA Identifies airport names by the International Air Transport Association (IATA) codes. Utterance: Flying to LHR
Captured: Details of the London Heathrow Airport
ICAO Identifies International Civil Aviation Organization (ICAO) codes. Utterance: Flying to EGLL
Captured: Details of the London Heathrow Airport
Abbreviations of cities Identifies city abbreviations that are listed in www.geonames.org Utterance: Flying to LA
Response: The airport you entered seems to be ambiguous. Tell me the option you would like to choose.
<Names of five airports in LA>

Attachment (Image / File)

The user can attach a file, image, or email up to 25 MB.

"entities":
{
"AttachmentEntity": "send"
}

Note: Currently, the attachment entity is supported only for the following channels – Facebook, Twitter, Web/Mobile, and Slack.

City

The name of a city in an utterance such as What is the temperature in New York. The virtual assistant captures any city name with over 5000 population in the form of a string. We use www.geonames.org for all the city details.

Note: City names are not disambiguated currently but prioritized based on their population. So, if the user utterances consist of Portland, Portland OR ranks higher than Portland ME.
"entities":
{
"CityEntity": "New York"
}

Country

Captures the name of a Country from user utterance such as What is the capital of the United States of America.

Country details are returned as a JSON entity with the elements shown below:

"CountryEntity": {
      "alpha3": "USA",
      "alpha2": "US",
      "localName": "United States of America",
      "shortName": "United States",
      "numericalCode": 840
}

See here for a complete list of countries https://www.nationsonline.org/oneworld/country_code_list.htm.

Element Description Examples
alpha3 The three-letter code of the country USA, GBR, or IND
alpha2 The two-letter code for the country US, GB, or IN
localName Name of the country United States of America, United Kingdom, or India
shortName Short name United States, United Kingdom, or India
numericalCode United Nations, used numerical code M49 for countries 840, 826, or 356

Company Name or Organization Name

Captures the name of a company from user utterances such as the Nearest branch for Amazon. The value for Company Name is returned (Amazon) as a string.

The company name corpus includes language-specific names. Variations of a company’s name like stock name, registered name, etc. are all mapped to a common name, thus ensuring that, for example, Amazon, Amazon.com, Amazon Inc are all recognized as a single company.

Apart from the supported companies, the virtual assistant recognizes the words starting with a capital letter and followed by these suffixes as a company type: Inc, Incorporated, Corp, Corporation, Group, Ltd, Limited, Co, Company, LP, LLP, LLLP, LLC, PLLC.

 "entities":
{
"OrganizationEntity": "amazon"
}
List of Supported Company Names
List of Supported Company Names

ABN AMRO
Accor
Acer
Activision Blizzard (Activision Blizzard)
Acumen
Adidas
Aditi Technologies
Aditya Birla
Advanced Micro Devices (AMD)
Affiliated Computer Services
Ahold Delhaize
Air France-KLM
Airbus
Aitken Spence
AkzoNobel
Albertson’s
Albertsons
Alcatel-Lucent
Alfa Laval
Alliance Global
Allianz
AllState
Alstom
Altria
Amazon.com (Amazon)
American Express (AMEX)
American International Group (AIG)
American Savings
Andritz AG
AOL Time Warner (AOL Time Warner)
Aon
Apollo Tyres
Apple
Apple Computer
Arcor
Assicurazioni Generali
Associated Press
Asus
AT&T
Atari
Avast Software
Avatar Reality
Avianca
AXA
Axiata
Axis Bank
Bacardi
Banco Bilbao Vizcaya Argentaria (BBVA)
Banco Santander
Bank of America (BOA)
Bank of Hawaii (BOH)
Bank of Montreal
Barclays
Barilla
Barnes and Noble
Barrick Gold
BASF
Baskin-Robbins
Bata
Bayer
Becton Dickinson
Berkshire Hathaway
Bic
BIDV
Billabong
Black & Decker
Bloomingdale’s
BMW
BNP Paribas (BNP)
Boeing
Bombardier
Borders
Bouygues
BRAC
Bridgestone
British Airways (BA)
British Petroleum (BP)
Brookstone’s
Cadbury Schweppes
Canon
CapGemini
Capital One
Caterpillar
Celestica
Central Pacific Bank
Chevron
Cisco Systems (Cisco)
Citibank (Citi and Citigroup)
Coca-Cola (Coke)
Cognizant Technology Solutions
Comerica
Concentrix
ConocoPhillips (Conoco)
Costco
Countrywide
Creative Labs
Crédit Agricole (CA)
Credit Suisse
Cummins
CVS
Dabur
Daikin
Daimler AG
Dangote
Danish Refugee Council
Danone
Decathlon
Dell
Dell Computer (Dell)
Deloitte
Delta Air Lines (Delta)
Deutsche Bank
Deutsche Telekom
DHL
Dow Chemical
Dunkin’ Donuts
easyJet
EDF
Electrolux
Electronic Arts (EA)
Electronic Data Systems (EDS)
Embraer
EMC
Emerson Electric
Enel
Eni
Enron
Epson
Ericsson
Etisalat
Expedia
Exxon Mobil (Exxon Mobil)
ExxonMobil (Exxon Mobil)
EY
Faber-Castell
Facebook
Federal Express (FedEx)
Ferrero
Fiat
Ficosa
Finastra
FIS
FleetBoston
Foodland
Ford Motor Company (Ford)
FPT
France Télécom
Fujitsu
Gap
Gazprom
General Electric (GE)
General Motors (GM)
General Nutrition Center (GNC)
Generali
Gerdau
Gillette
Glaxo Smith Kline (Glaxo)
Google
Haier
Halliburton
Hawaiian Electric (HECO)
HCL Technologies
Hearst
Heineken
Hewlett Packard (HP)
Hewlett-Packard (HP)
Hilti
Hindustan Computers
Hitachi
Honda
Honda Motors (Honda)
Honeywell
HSBC
HTC
Huawei
Hutchison Whampoa
Hyundai
Hyundai Motor Company
ICAP
ICICI
IKEA
Illinois Tool Works
Indesit
Indian Oil
Indofood
Infosys
ING
Ingersoll Rand
Instagram
Intel
International Business Machines (IBM)
International Paper
Intesa Sanpaolo
IOCL
Isuzu
Jardine Matheson
JCPenney (J.C. Penney, JC Penny, and JC Penney)
JG Summit Holdings
Johnson & Johnson (J&J)
Jollibee
JPMorgan Chase (JPMorgan Chase)
Kenya Airways
KFC
Kia Motors (Kia)
Kingston Technology
KMart
Knorr
Komatsu
Konami
Kony
Kore (Kore.ai and Kore.com)
KPMG
Krispy Kreme
Kroger
L’Oréal
Lactalis
Lagardère
Lear
Lenovo
LensCrafters
Leonardo
Leoni AG
Lexmark
LG
LG Electronics (LG)
Linde
LiuGong
Lockheed Martin
Lotte
Lowe’s
Lowes
Lucent Technologies
Lukoil
Lupin
Lush
Luxottica
Mac Cosmetics
Macy
Maggi
Marriott
Martini & Rossi
Mastercard
Masterfoods
Mattel
Mazda
Mercedes-AMG (Mercedes-Benz)
Merck
Merrill Lynch
Metropolitan Life (MetLife)
Michelin
Microsoft
Millipore
Mitsubishi Electric
Mobil
Monsanto
Motorola
Nagarro
Namco Bandai Games
Nestlé
NetApp
New York Life Insurance (New York Life)
News Corporation (“News Corp”)
Nike
Nikon
Nintendo
Nissan
Nissan Motors (Nissan)
Nordstrom (Nordstrom Rack)
Novartis
Oceanit
Oknoplast
Ooredoo
Oracle
Orbitz
Origins
Outfit7
Pacific Gas and Electric (PG&E)
Panasonic
Parmalat
Partners In Health
Pepper Lunch
Pepsi-Cola (Pepsi and PepsiCo)
Petronas
Petrovietnam
Pfizer
Philips
Phillip Morris
Pirelli
POSCO
Priceline
Procter & Gamble (P&G)
Proton
PSA Peugeot Citroën (Peugeot Citroën)
PwC
QNB
Quest
Radio Shack
Ranbaxy
Reckitt Benckiser
Red Bull
Red Bus
Regus
Renault
Repsol
RG Multinational
Ricoh
Robert Bosch GmbH (Bosch)
Rockstar Energy
Rohde & Schwarz
Royal Bank of Canada (RBC)
Royal Bank of Scotland (RBS)
Royal Dutch Shell (Shell)
RPG
Rusal
SABMiller plc
Safeway
Samsung Electronics (Samsung)
San Miguel
SanDisk
Sanofi Aventis
SAP (SAP Labs and SAP SE)
Sapient
SAS
Sasken Communication Technologies
Sasol
SBC Communications
Schlumberger
Schneider Electric
Scotiabank
Sears Roebuck (Sears)
Sega Sammy Holdings
Sephora
Servcorp
Sharper Image
Shirokia
Siemens
Sinopec
SM Investments
Société Générale
Solaris Bus & Coach
Sony (Sony Computer Entertainment, Sony Music Entertainment, and Sony Pictures Entertainment)
Southwest Airlines
Sprint
Square Enix
Standard Chartered
Starbucks
State Street
SunTrust
Target
Tata Motors (Tata)
Tate & Lyle
TCS
Tech Mahindra
Telefonica
Tesco
Tetra Pak
The Body Shop
The Coffee Bean & Tea Leaf
The International Press and Media Group (IPMG)
Thomson Reuters (Reuters)
Tire and Rubber Company (Goodyear)
Tissot
TMobile
Toshiba
Total
Towers Watson
Toyota
TRW Automotive
Tyco
U.S. Bancorp
Uber
Unicredit
Unilever
Unisys
United Airlines (United)
United Parcel Service (UPS)
United States Automobile Association (USAA)
United States Postal Service (USPS)
Verizon
Viacom
Victoria’s Secret
Viettel Mobile
Vimpelcom
Virgin
Visa
VNPT
Vodafone
Voith
Wachovia
Walmart
Wal-Mart
Walt Disney (Disney)
Washington Mutual
Wells Fargo
Whirlpool
Whole Foods
Wikimedia Foundation
Wipro
Wirecard
Yahoo
Yakult
Yamaha
Zensar Technologies
ZTE

Color

Captures the name of the color from a user utterance. For example, Set the status to Green. Returns a value for the Color as Green as a string.

"entities":
{
"ColorEntity": "green"
}
List of Supported Colors
List of Supported Colors
Color Prefix
green caesious celadon chartreuse chlorochrous glaucous green greenish Kelly olivaceous pistachio porraceous prasinous smaragdine virescent virid viridian zinnober apple celery emerald lime mint olive sage
brown amber bronze brown brownish brunette buff fuscous infuscate mahogany russet rust sandy sepia sienna sinopia sorrel tan taupe terracotta Titian umbra almond chocolate cinnamon coffee copper hazel honey khaki nutmeg rainbow walnut
orange auburn orange orangish
blue aqua aquamarine azuline azure blue blueish cerulean cyaneous indigo mazarine navy pavonated porceline royal teal turquoise ultramarine watchet aquamarine cobalt peacock periwinkle sapphire sky steel
purple amaranthine heliotrope hyacinthine ianthine magenta mauve orchid porphyrous puce purple purplish purpure purpureal rhodopsin aubergine claret lavender lilac mulberry plum violet
red cardinal cerise cinnabar coccineous coquelicot cramoisy crimson cyan erythraean flammeous fuchsia garnet haematic incarnadine kermes lateritious madder magenta maroon miniaceous minium modena nacarat phoeniceous pink pinkish ponceau puccoon puniceous rectory red reddish Rufous sanguineous solferino stammel testaceous umber vermeil vermilion vermillion vinaceous brick burgundy cherry coral raspberry rose ruby salmon strawberry maroon miniaceous minium modena nacarat phoeniceous pink pinkish ponceau puccoon puniceous rectory red reddish Rufous sanguineous solferino stammel testaceous umber vermeil
yellow beige buff citreous citrine gamboge lurid nankeen ochre tawny yellow yellowish apricot butter buttercup butterscotch canary chrome gold goldenrod lemon mustard peach persimmon primrose saffron suede sulphur tangerine
gold metallic
silver metallic
copper metallic
bronze metallic
black blackish ebony jet_black licorice melanic morel nigrine piceous
white blond chalk cream cretaceous ivory magnolia off-white whey white whitish
grey ashen cesious columbine gray grayish grey greyish hoary taupe
transparent
reflective
metallic argent brass bronze copper gold metallic platinum silver

Currency

Captures the amount and type of currency from the user utterance. For example, This handbag is priced at 200 dollars where 200 is the amount and USD is the currency.

This entity type recognizes:

  • Full currency names (Dollar, Rupees, Indian National Rupees, Dinar)
  • Currency symbols ($, S$, £)
  • Standard currency abbreviations (INR, USD)
  • Commonly used slang for currencies (Buck, Nickel, Dime, Quid, Loonie, Toonie, Benjamin, Jackson, Hamilton.)
Note: Currency names are not disambiguated based on your previous usage. So, if the user utterance consists of a dollar first time, USD might rank higher than SGD (Singapore Dollar) because of the popularity. But, if the user explicitly mentions SGD, the virtual assistant continues to consider SGD for the dollar from there.
"CurrencyEntity":[
{
"code": "SGD",
"amount": 20
}

Custom

Define a regular expression to validate the user input in the Expression field for a custom entity. You can directly enter the expression or use a Content, Context, or Environment variable that contains a regular expression or concept as the value.

See a few examples in the table below.

Type Example Input in the Field Acceptable Sample Input
Regular Expression [a-zA-Z]{3}[-]\d{4} NLP-1234
Concept Variable ~car_brands Tesla
Content, Context, or
Environment Variable
content.TicketNumber
context.TicketNumber
env.TicketNumber
Where the variable TicketNumber
contains the regular expression
[a-zA-Z]{3}[-]\d{4} as the value.
NLP-1234
or
TKT-1234
Note: The dialog will fail if the expression is null. If the null expression is desired, bot developers can always use the preConditions entity rule as an alternative to skip over a node in the flow.

For more information, refer to Regex Expressions.

Composite

Composite entities are used to capture multiple entity values in one entity.

For example, consider the sales inquiries for flight bookings. Typical queries can be of the form: I am interested in flying first class from Los Angeles to New York City, tomorrow. or I want to fly to NYC tomorrow.

As you can see, the virtual assistant typically needs to process a combination of details like flight class, departure city, destination city and travel date to respond to those queries.

These scenarios are taken care of by the Composite Entity Type. Refer here to know more about Composite Entity Types.

Date

Captures a date mention from a user utterance. For example, Book a flight on the 10th of October returns the value for Date in ISO8601 date format is YYYY-MM-DD.

The virtual assistant recognizes all possible ways and formats of dates, like:

  • Formatted dates like YYYY-MM-DD, DD-MM-YYYY, DD-MM-YY, YYYY/MM/DD, DD/MM/YYYY, DD/MM/YY, YYYY.MM.DD, DD.MM.YYYY, DD.MM.YY.
  • All number dates like YMD and DMY for 20180518 and 09102013.
  • Formatted dates with space separators like YYYY MM DD. dd/mm yyyy, dd-mm, dd-mm-yyyy, dd-mm-yy, mm-dd, dd / mm / yyyy, dd . mm . yyyy, ddmm yyyy, mmdd.
  • Named months like yyyy/dd/monthNames or yyyy-dd-monthNames or dd.monthNames.yyyy 2018/28/Dec or 2018-28-Dec or 28.Dec.2018.
  • Absolute dates related to now like today, tomorrow, yesterday, tonight, this evening, this afternoon, day after tomorrow, the day before yesterday, yesterday morning, tomorrow night, tomorrow for 1 hour, 3 days ago, 24 hours ago, in 3 days, 2 months hence, this day next month last year, next June, June 26 of the year after next, in a week, 2 weeks ago, 22nd of this month, Next month this day, Next 25th, This month 30th, 27th of this month, 3rdmonth, 2nd of the month.
  • Named dates like Christmas Day, Christmas Eve, Memorial Day this year, Thanksgiving 2018, last Thanksgiving, week after Thanksgiving, Passover, a day before the new year, day after Christmas.
  • Relative dates from absolute like 2 more days from tomorrow, 3 days after July 4, 3 days from now, 5days from today, Need two more days, in 2 days.
  • Weekdays like Saturday, coming Monday, Sunday, Saturday, next weekend, First Saturday of the upcoming year, First Sunday of the upcoming month, first Saturday of next month, First Sunday of next year.
"entities":
{
"DateEntity": "1982-04-13"
}

Date Time

Captures a date grouping along with time in a user utterance.

For example, Book a flight on the 10 th of October at 6 pm, returns the value for Date Time in ISO8601 date format as YYYYY-MM-DDThh: mm: ss.sTZD.

The virtual assistant recognizes all possible ways and formats to express date and time.

"entities":
{
"DateEntity": "2017-10-10T18:00:00+05:30"
}

Date Period

Captures start date and end date from the user input. For example, Book the hotel for five days starting May 5. If the user input does not include one or both of the dates, the virtual assistant prompts the user to provide the necessary input.

Note: Unlike other entities, Date Period entities allow you to enter two sets of user and errors prompts:

  1. User and Error Prompt for From Date.
  2. User and Error Prompt for To Date.

The following table lists how the entity works in different scenarios:

Input Type Virtual Assistant Behaviour
Does not include both From and To dates [For example, Book hotel]. Shows User Prompts for From Date to the user
Includes either From or To date [For example, Book a hotel from 15th Aug] Shows User Prompts for From Date or User Prompts for To Date based on which is missing from the input
Includes implicit reference to From Date and duration [For example, Book a hotel for five days starting from Tuesday] Determines both dates
Includes From Date and duration [For example, Book a hotel for five days from 15th Nov] Determines both dates
Includes From Date and To Date [For example, Book a hotel from 5th to 10th] Determines both dates

Description

Captures statements or paragraphs of text from the user utterance. The value for Description is returned as a string and can include wild characters.

Note: Multi-Item is not available for this entity type.
"entities":
{
"Description": "text here"
}

Email

Captures email address from the utterance. For example, “Send an email to help@koremessenger.com” returns the value of Email as a string.

"entities":
{
"Email": "help@koremessenger.com"
}

List of Items (enumerated)

Display a list of values to the end-user. To define the list type,

  1. Click the Settings icon next to the List of items (enumerated) Type field.
  2. On the List of items (enumerated) Setup page, define one of the following list types.
    • Static List
    • List from Context

This feature is not fully supported in all languages Click here for details.

  • Static List – Enter the Display Name, Value, and Synonyms for the key. Set up Auto-Correction value for the user inputs.
  • List from Context – Define a context variable to use for this item in the following fields:
    • Specify Context Variable to Use – Defines the context object type. For example, EnterpriseContext, BotContext, UserContexts, or session variables such as context.entities. Entercontext.; select a context object type.
    • Display Name Key – The name displayed to the end-user.
    • Value Key – The key that represents the value of the item in the list.
    • Synonyms Key – Enter one or more synonyms for the key (Click here for details).
  • Auto-Correction– Set up auto-correct thresholds for the LOV entity type so that it not only accepts exact matches but also closest utterances with small variations. For example, let us consider that a list value called Apple for which a typo such as appel is accepted based on your threshold settings. The Auto-Correction setting works in the following way:
    1. The virtual assistant identifies the number of letters to be changed (inserts, deletes, or replaces) in user input to match it to a value in the list.
    2. The number is converted to a percentage of the total number of letters in the input.
    3. The list value with the highest similarity is considered as input if the score is greater than or equal to the configured percentage.
    Spell correction does not apply to dictionary words or alphanumeric inputs.

Post v7.1, the following keys are added to the context object for the below-mentioned usage:

  • ambiguousEntityValues: This key contains values when the user input for a multi-item entity is ambiguous. Using this, you can check if any ambiguous values were identified and construct the flow to resolve the ambiguity. This key is reset if the entity is re-prompted during the dialog. The values are an array of JSON objects, each object containing title, value, and synonym.
  • synonymsUsed: This key holds the synonym used to identify the item. You can use this value to personalize the virtual assistant response accordingly if needed. This key is reset if the entity is re-prompted during the dialog.

You can also choose to present the list of values as part of the entity prompt to the user. For this, you need to set the Display List of Values to ‘Yes, use channel specific standard formatting for default messages and show available list of values to end user’. This option works only with the Plain Text prompts. This list will not be presented if JavaScript based templates are used as prompts.


Note: The ‘Display List of Values’ option is available only for the List of Items (enum). It is NOT available for the List of Items (lookup).

List of Items (lookup)

Display a list of values to the end-user. To define the lookup list,

  1. Click the Settings icon next to the List of items (lookup) Type field.
  2. On the List of items (lookup) Setup page, define one of the following list types.
    • Static List
    • Remote List

This feature is not fully supported in all languages. Click here for details.

Static List: Use Static List to define the entity values as one of the following list types:

  • JSON tab – Enter a list of key/value pairs and synonyms (Click here for more). For example:
    [{
    "title": "United States",
    "value": "US",
    "synonyms": ["united states", "USA", "US", "U.S.A", "America"]
    },
    {
    "title": "John F. Kennedy International Airport",
    "value": "JFK",
    "synonyms": ["John F. Kennedy International Airport", "New York International Airport", "JFK"]
    }
    ]
  • Editor tab – Enter the Display Name, Value, and Synonyms for the key.
  • Upload File – Click Upload File to locate a JSON formatted file list or a .csv file formatted list of key/value pairs. For example,
    CSV File Format

Post v7.1, the following keys are added to the context object for the below-mentioned usage:

  • ambiguousEntityValues: This key contains values when the user input for a multi-item entity is ambiguous. Using this, you can check if any ambiguous values were identified and construct the flow to resolve the ambiguity. This key is reset if the entity is re-prompted during the dialog. The values are an array of JSON objects, each object containing title, value, and synonym.
  • synonymsUsed: This key holds the synonym used to identify the item. You can use this value to personalize the virtual assistant response accordingly if needed. This key is reset if the entity is re-prompted during the dialog.

Remote List

Remote List is used when the entity extraction needs to be done by an external service due to security restrictions or any other reasons. This can also be used to handle large data.

The steps involved are as follows:

  1. Define the Service Call: You can set up a service call similar to how a service node is currently set up. You can set headers, body (for POST), etc,. (Click here for more).
    The external service invoked must have a provision to accept and handle the user utterance data that the platform populates. The context.inputData object with the following fields is used for that purpose:

    • input – An array containing the list of inputs received from the user for the current dialog.
    • usedUp – Index form of words that are already used for other entities or intents. The format is x-y-z where
      • x represents the sentence/utterance index (0 till n).
      • y represents the start index of the used up word within the x utterance.
      • z represents the end index of the used up word.
      • sentenceindex-x-x represents no used up words in that sentence.
      • If multiple words are used-up in a single sentence, these should be entered as comma-separated values.
    • isMultiItem – Flag should be set if multiple values are expected from the service call.
        "inputData": {
          "input": [
            "get account"
          ],
          "usedUp": [
            "0-x-x"
          ],
          "isMultiItem": false
        }
  2. Map Response: You can map a response from the service call with the following fields:
    • The context variable that holds the response data from the service call. This must be in an array format.
    • Display Key Name – Name used to refer to this field; this name is used when interacting with the user. For example, in a disambiguation scenario. This can be accessed using {{context.entities.<entity-name>.title}}.
    • Value Key – The field name in the response body from the service call that holds the value, the entity is assigned this value. This can be accessed using {{context.entities.<entity-name>.value}}.
    • Synonyms Key – The field containing the synonyms for this field, if any. This is the value that the user refers to. For example, in response to the disambiguation question. This can be accessed using {{context.entities.<entity-name>.synonym}}.
    • Matched Word Index – To indicate the words in the inputData that were used for entity extraction (in the same format as the usedUp value in the context.inputData object). This is used by the platform to mark the word as used in the user utterance.

Flow: The platform will:

  1. Populate the context.inputData with the values mentioned above.
  2. Make the service call to fetch the entity values passing the values as configured in the service call.
  3. Use the values returned as per Response Mapping:
    • If a single value is returned by the remote system, then that value is assigned to the entity.
    • If multiple values are returned by the remote system, the platform extracts the entity from this list.
      • If a match is found, it is assigned to the entity.
      • If no match is found, the user is presented with a list of values to choose from. If the user input matches with any of the items in the list, then it is assigned to the entity. If the user input does not match any of the items, then the input is updated in the context object and another call to the remote service is initiated.
      • If one or more matches are found, then it is considered ambiguous and the user is presented with the choices.  If the user input matches with any of the items in the list, then it is assigned to the entity. If the user input does not match any of the items, then the input is updated in the context object and another call to the remote service is initiated.
    • If the entity is marked as a multi-item entity, then the list of values returned from the remote server is re-evaluated and all valid (valid as per entity type) list items are assigned as values for the entity. Invalid list items are discarded.
  4. Handle the following exceptions:
    • In case the response from the service call is empty or not in the expected format, the User Prompt settings for the entity are used to prompt the user for input.
    • In case of ambiguity, for example, when the service returns multiple values when one is expected, the user is prompted to choose one from the list of values returned by the service.

Location

Captures the location details of a city or state from a user utterance.

For example, in Bellagio, Las Vegas the entity captures the location details of Las Vegas. The entity returns the location of the object with address and coordinates as a JSON response.

"Location":
{
"formatted_address": "Las Vegas, NV, USA",
"lat": 36.1699412,
"lng": -115.1398296
}

Number

Captures a number from a user utterance. For example, Book a room for 16 people. In this example, the value 16 is returned as the number.

The virtual assistants platform recognizes the spelled-out numbers and also standard abbreviations such as 1M. A consecutive number of words are combined into one number. For example, one two three becomes 123.

Note: The maximum number of digits allowed is 18.

"entities":
{
"NumberEntity": 16
}

Person Name

Captures the full name of a person from a user utterance.

For example, Send an email to John Smith, where John Smith is identified as Person Name.

The Kore.ai virtual assistant platform assumes that the first word in the user utterance with capital letters as the first name along and the next two words in camel case as a part of the name.

For example, if the user utterance is I want to talk to John Smith, it recognizes John Smith as the name. If the utterance is I want to talk to John smith immediately it recognizes only John as the name.

"entities":
{
"PersonName": "John Smith"
}

Percentage

Captures the percentage value from a user utterance.

For example, The chance of rain today is more than 60 percent, where 60 is the percentage and is returned as a float value of 0.6 in a range of (0.0-1.0). It supports the percent, percentage, and the % sign.

"entities":
{
"PercentageEntity": 0.6
}

Phone Number

Captures the standard 3-digit to 12-digit phone number(s) from a user utterance.

For example, Please call 4075551212, the value for the Phone Number is 4075551212 and is returned as a number. The virtual assistant now extracts the correct phone number when provided in a non-standard format like (407)-407-4077 or 407.407.4077 without prompting the user to enter the phone number in the correct format. This is applicable to all the Phone Number based entities by default.

"entities":
{
"PhoneNumber": "+4075551212"
}

Support for Phone Numbers in Arabic

The Platform now supports phone numbers in the Arabic language, where the virtual assistant identifies the Arabic number given in words from the user utterance (text) and converts it to the relevant digit.

For example:

The input أربعة صفر سبعة. أربعة صفر سبعة. أربعة صفر سبعة سبعة is converted to 407 407 407 where “.” is identified as a separator.

Quantity

Captures the quantity in an utterance with the following details from the user utterance:

  • Type of quantity (length, area, volume, etc.).
  • Unit of measurement (kilometers, square kilometer, cubic meter, etc.).
  • The amount (100, 500, 1.5, etc.).

When you select the Quantity entity type, you also need to select a unit type for the quantity and the default measure.

For example, for capturing volumes, select Volume as the Unity Type and Milliliters as the Default Unit. So, if a user utterance is Add 500 ml of water, the following JSON is returned:

"Quantity":
{
"unit": "millilitre",
"amount": 500,
"type": "volume",
"source": "500 ml"
}

The virtual assistants platform identifies all these quantities and unites along with the standard abbreviations, codes, and symbols.

Type Units
Length
  • kilometer
  • meter
  • centimeter
  • inch
  • foot
  • yard
  • mile
Area
  • square kilometer
  • square meter
  • square mile
  • square yard
  • square foot
Volume
  • cubic meter
  • liter
  • milliliter
  • gallon
  • ounce
Time
  • hour
  • minute
  • second
  • millisecond
Speed
  • meters per second
  • kilometers per hour
  • miles per hour
Pressure
  • pascal
  • atmosphere
  • bar
Energy
  • calorie
  • kilocalorie
  • watt-hour
  • kilowatt-hour
Memory
  • bit
  • byte
  • kilobyte
  • megabyte
  • terabyte
  • gigabyte
Weight
  • ton
  • kilogram
  • gram
  • pound
  • ounce
Angle
  • degree
Age
  • day
  • week
  • month
  • year
  • decade
  • century
Temperature
  • celsius
  • fahrenheit

String

Works identical to the Description entity type but limited to one sentence.

There won’t be any validations done on the user utterance for string entities unless trained. Hence this entity type is used as a last resort when your requirement is not met with any of the platform supported entity types.

Time

Capture time in a user utterance. For example, Set my alarm for 6 am, return the value of Time in ISO 8601 time format as hh:mm:ss.sZD.
It recognizes the following denotations:

    • am, a.m., AM, pm, p.m., PM, P.M.
    • Numbers spelled out. For example, Six AM.
    • Morning and evening. For example, Six in the evening.
"entities":
{
"TimeEntity": "T06:00:00+05:30"
}

Time Zone

A time zone. Eastern Standard Time converts the timezone into GMT and stores the resulting value. For example, if you type EST, it is stored as -6:00. The virtual assistants platform recognizes the standard time zones.

"entities":
{
"TimeZoneEntity": "-06:00"
}

URL

Captures a web URL from the utterance. The virtual assistant recognizes all standard formats of URLs. For example, Visit our website: www.kore.ai. The value for the URL is returned as a string.

"entities":
{
"URLEntity": "www.kore.ai"
}

Zip Code

Captures a US zip code from the user utterance. For example, What is the weather for 32746? The value for Zip Code is 32746 and is returned as a string.

"entities":
{
"ZipcodeEntity": "32746"
}

Entity Types

The Entity Type provides the NLP Interpreter with the expected type of data from a user utterance to enhance recognition and system performance.  The Kore.ai NLP interpreter extracts the entity from the user utterance. If the user does not enter a required entity, you can define a virtual assistant Response node to prompt the user to provide the entity. For more information, refer to Working with the Confirmation Node.

You can also define entity rules to validate user input, refer here for details.

The following Entity Types are specified for an entity node.

Address Composite Person Name
Airport Date Percentage
Attachment Date Period Phone Number
Email Date Time Quantity
City Description String
Country List of Items (enumerated) Time
Company List of items (lookup) Time Zone
Color Location URL
Custom Number Zip Code
Currency

Address

Captures addresses written in the standard US and Germany address formats. For example, 200 E Main ST Pheonix AZ 85123 USA. The complete address is captured as a string: “200 E Main ST Pheonix AZ 85123 USA.” In addition to this string, the Address entities like City, Country, and Zip Code also provide the full formatted address that has been captured.

"entities":
{
"AddressEntity": "200 E Main ST Pheonix AZ 85123 USA"
}

For other country addresses, the platform captures strings that end with a recognizable city or country name. For more details, please refer to the City entity.

Airport

Captures airport details with the following inputs:

  • City name
  • Airport name
  • IATA code
  • ICAO
  • Abbreviations of US cities.

Airport details are returned as a JSON entity with the elements shown below:

"AirportEntity":
  {"IATA": "LHR",
   "AirportName": "London Heathrow Airport",
   "City": "London",
   "ICAO": "EGLL",
  }

We use https://github.com/opentraveldata/opentraveldata for all the airport details.

Input Description Examples
City
name
Identifies the airport name from the city name in the user utterance. If the city has multiple airports, shows the list of airports to choose from. Utterance: Flying to Los Angeles
Response: The airport you entered seems to be ambiguous. Tell me the option you would like to choose.
<Names of five airports in Los Angeles>
Airport name Identifies the airport name from full airport name or partial name with the prominent keyword. Utterance: Flying to Heathrow
Captured: London Heathrow Airport with the necessary details in the virtual assistant.
IATA Identifies airport names by the International Air Transport Association (IATA) codes. Utterance: Flying to LHR
Captured: Details of the London Heathrow Airport
ICAO Identifies International Civil Aviation Organization (ICAO) codes. Utterance: Flying to EGLL
Captured: Details of the London Heathrow Airport
Abbreviations of cities Identifies city abbreviations that are listed in www.geonames.org Utterance: Flying to LA
Response: The airport you entered seems to be ambiguous. Tell me the option you would like to choose.
<Names of five airports in LA>

Attachment (Image / File)

The user can attach a file, image, or email up to 25 MB.

"entities":
{
"AttachmentEntity": "send"
}

Note: Currently, the attachment entity is supported only for the following channels – Facebook, Twitter, Web/Mobile, and Slack.

City

The name of a city in an utterance such as What is the temperature in New York. The virtual assistant captures any city name with over 5000 population in the form of a string. We use www.geonames.org for all the city details.

Note: City names are not disambiguated currently but prioritized based on their population. So, if the user utterances consist of Portland, Portland OR ranks higher than Portland ME.
"entities":
{
"CityEntity": "New York"
}

Country

Captures the name of a Country from user utterance such as What is the capital of the United States of America.

Country details are returned as a JSON entity with the elements shown below:

"CountryEntity": {
      "alpha3": "USA",
      "alpha2": "US",
      "localName": "United States of America",
      "shortName": "United States",
      "numericalCode": 840
}

See here for a complete list of countries https://www.nationsonline.org/oneworld/country_code_list.htm.

Element Description Examples
alpha3 The three-letter code of the country USA, GBR, or IND
alpha2 The two-letter code for the country US, GB, or IN
localName Name of the country United States of America, United Kingdom, or India
shortName Short name United States, United Kingdom, or India
numericalCode United Nations, used numerical code M49 for countries 840, 826, or 356

Company Name or Organization Name

Captures the name of a company from user utterances such as the Nearest branch for Amazon. The value for Company Name is returned (Amazon) as a string.

The company name corpus includes language-specific names. Variations of a company’s name like stock name, registered name, etc. are all mapped to a common name, thus ensuring that, for example, Amazon, Amazon.com, Amazon Inc are all recognized as a single company.

Apart from the supported companies, the virtual assistant recognizes the words starting with a capital letter and followed by these suffixes as a company type: Inc, Incorporated, Corp, Corporation, Group, Ltd, Limited, Co, Company, LP, LLP, LLLP, LLC, PLLC.

 "entities":
{
"OrganizationEntity": "amazon"
}
List of Supported Company Names
List of Supported Company Names

ABN AMRO
Accor
Acer
Activision Blizzard (Activision Blizzard)
Acumen
Adidas
Aditi Technologies
Aditya Birla
Advanced Micro Devices (AMD)
Affiliated Computer Services
Ahold Delhaize
Air France-KLM
Airbus
Aitken Spence
AkzoNobel
Albertson’s
Albertsons
Alcatel-Lucent
Alfa Laval
Alliance Global
Allianz
AllState
Alstom
Altria
Amazon.com (Amazon)
American Express (AMEX)
American International Group (AIG)
American Savings
Andritz AG
AOL Time Warner (AOL Time Warner)
Aon
Apollo Tyres
Apple
Apple Computer
Arcor
Assicurazioni Generali
Associated Press
Asus
AT&T
Atari
Avast Software
Avatar Reality
Avianca
AXA
Axiata
Axis Bank
Bacardi
Banco Bilbao Vizcaya Argentaria (BBVA)
Banco Santander
Bank of America (BOA)
Bank of Hawaii (BOH)
Bank of Montreal
Barclays
Barilla
Barnes and Noble
Barrick Gold
BASF
Baskin-Robbins
Bata
Bayer
Becton Dickinson
Berkshire Hathaway
Bic
BIDV
Billabong
Black & Decker
Bloomingdale’s
BMW
BNP Paribas (BNP)
Boeing
Bombardier
Borders
Bouygues
BRAC
Bridgestone
British Airways (BA)
British Petroleum (BP)
Brookstone’s
Cadbury Schweppes
Canon
CapGemini
Capital One
Caterpillar
Celestica
Central Pacific Bank
Chevron
Cisco Systems (Cisco)
Citibank (Citi and Citigroup)
Coca-Cola (Coke)
Cognizant Technology Solutions
Comerica
Concentrix
ConocoPhillips (Conoco)
Costco
Countrywide
Creative Labs
Crédit Agricole (CA)
Credit Suisse
Cummins
CVS
Dabur
Daikin
Daimler AG
Dangote
Danish Refugee Council
Danone
Decathlon
Dell
Dell Computer (Dell)
Deloitte
Delta Air Lines (Delta)
Deutsche Bank
Deutsche Telekom
DHL
Dow Chemical
Dunkin’ Donuts
easyJet
EDF
Electrolux
Electronic Arts (EA)
Electronic Data Systems (EDS)
Embraer
EMC
Emerson Electric
Enel
Eni
Enron
Epson
Ericsson
Etisalat
Expedia
Exxon Mobil (Exxon Mobil)
ExxonMobil (Exxon Mobil)
EY
Faber-Castell
Facebook
Federal Express (FedEx)
Ferrero
Fiat
Ficosa
Finastra
FIS
FleetBoston
Foodland
Ford Motor Company (Ford)
FPT
France Télécom
Fujitsu
Gap
Gazprom
General Electric (GE)
General Motors (GM)
General Nutrition Center (GNC)
Generali
Gerdau
Gillette
Glaxo Smith Kline (Glaxo)
Google
Haier
Halliburton
Hawaiian Electric (HECO)
HCL Technologies
Hearst
Heineken
Hewlett Packard (HP)
Hewlett-Packard (HP)
Hilti
Hindustan Computers
Hitachi
Honda
Honda Motors (Honda)
Honeywell
HSBC
HTC
Huawei
Hutchison Whampoa
Hyundai
Hyundai Motor Company
ICAP
ICICI
IKEA
Illinois Tool Works
Indesit
Indian Oil
Indofood
Infosys
ING
Ingersoll Rand
Instagram
Intel
International Business Machines (IBM)
International Paper
Intesa Sanpaolo
IOCL
Isuzu
Jardine Matheson
JCPenney (J.C. Penney, JC Penny, and JC Penney)
JG Summit Holdings
Johnson & Johnson (J&J)
Jollibee
JPMorgan Chase (JPMorgan Chase)
Kenya Airways
KFC
Kia Motors (Kia)
Kingston Technology
KMart
Knorr
Komatsu
Konami
Kony
Kore (Kore.ai and Kore.com)
KPMG
Krispy Kreme
Kroger
L’Oréal
Lactalis
Lagardère
Lear
Lenovo
LensCrafters
Leonardo
Leoni AG
Lexmark
LG
LG Electronics (LG)
Linde
LiuGong
Lockheed Martin
Lotte
Lowe’s
Lowes
Lucent Technologies
Lukoil
Lupin
Lush
Luxottica
Mac Cosmetics
Macy
Maggi
Marriott
Martini & Rossi
Mastercard
Masterfoods
Mattel
Mazda
Mercedes-AMG (Mercedes-Benz)
Merck
Merrill Lynch
Metropolitan Life (MetLife)
Michelin
Microsoft
Millipore
Mitsubishi Electric
Mobil
Monsanto
Motorola
Nagarro
Namco Bandai Games
Nestlé
NetApp
New York Life Insurance (New York Life)
News Corporation (“News Corp”)
Nike
Nikon
Nintendo
Nissan
Nissan Motors (Nissan)
Nordstrom (Nordstrom Rack)
Novartis
Oceanit
Oknoplast
Ooredoo
Oracle
Orbitz
Origins
Outfit7
Pacific Gas and Electric (PG&E)
Panasonic
Parmalat
Partners In Health
Pepper Lunch
Pepsi-Cola (Pepsi and PepsiCo)
Petronas
Petrovietnam
Pfizer
Philips
Phillip Morris
Pirelli
POSCO
Priceline
Procter & Gamble (P&G)
Proton
PSA Peugeot Citroën (Peugeot Citroën)
PwC
QNB
Quest
Radio Shack
Ranbaxy
Reckitt Benckiser
Red Bull
Red Bus
Regus
Renault
Repsol
RG Multinational
Ricoh
Robert Bosch GmbH (Bosch)
Rockstar Energy
Rohde & Schwarz
Royal Bank of Canada (RBC)
Royal Bank of Scotland (RBS)
Royal Dutch Shell (Shell)
RPG
Rusal
SABMiller plc
Safeway
Samsung Electronics (Samsung)
San Miguel
SanDisk
Sanofi Aventis
SAP (SAP Labs and SAP SE)
Sapient
SAS
Sasken Communication Technologies
Sasol
SBC Communications
Schlumberger
Schneider Electric
Scotiabank
Sears Roebuck (Sears)
Sega Sammy Holdings
Sephora
Servcorp
Sharper Image
Shirokia
Siemens
Sinopec
SM Investments
Société Générale
Solaris Bus & Coach
Sony (Sony Computer Entertainment, Sony Music Entertainment, and Sony Pictures Entertainment)
Southwest Airlines
Sprint
Square Enix
Standard Chartered
Starbucks
State Street
SunTrust
Target
Tata Motors (Tata)
Tate & Lyle
TCS
Tech Mahindra
Telefonica
Tesco
Tetra Pak
The Body Shop
The Coffee Bean & Tea Leaf
The International Press and Media Group (IPMG)
Thomson Reuters (Reuters)
Tire and Rubber Company (Goodyear)
Tissot
TMobile
Toshiba
Total
Towers Watson
Toyota
TRW Automotive
Tyco
U.S. Bancorp
Uber
Unicredit
Unilever
Unisys
United Airlines (United)
United Parcel Service (UPS)
United States Automobile Association (USAA)
United States Postal Service (USPS)
Verizon
Viacom
Victoria’s Secret
Viettel Mobile
Vimpelcom
Virgin
Visa
VNPT
Vodafone
Voith
Wachovia
Walmart
Wal-Mart
Walt Disney (Disney)
Washington Mutual
Wells Fargo
Whirlpool
Whole Foods
Wikimedia Foundation
Wipro
Wirecard
Yahoo
Yakult
Yamaha
Zensar Technologies
ZTE

Color

Captures the name of the color from a user utterance. For example, Set the status to Green. Returns a value for the Color as Green as a string.

"entities":
{
"ColorEntity": "green"
}
List of Supported Colors
List of Supported Colors
Color Prefix
green caesious celadon chartreuse chlorochrous glaucous green greenish Kelly olivaceous pistachio porraceous prasinous smaragdine virescent virid viridian zinnober apple celery emerald lime mint olive sage
brown amber bronze brown brownish brunette buff fuscous infuscate mahogany russet rust sandy sepia sienna sinopia sorrel tan taupe terracotta Titian umbra almond chocolate cinnamon coffee copper hazel honey khaki nutmeg rainbow walnut
orange auburn orange orangish
blue aqua aquamarine azuline azure blue blueish cerulean cyaneous indigo mazarine navy pavonated porceline royal teal turquoise ultramarine watchet aquamarine cobalt peacock periwinkle sapphire sky steel
purple amaranthine heliotrope hyacinthine ianthine magenta mauve orchid porphyrous puce purple purplish purpure purpureal rhodopsin aubergine claret lavender lilac mulberry plum violet
red cardinal cerise cinnabar coccineous coquelicot cramoisy crimson cyan erythraean flammeous fuchsia garnet haematic incarnadine kermes lateritious madder magenta maroon miniaceous minium modena nacarat phoeniceous pink pinkish ponceau puccoon puniceous rectory red reddish Rufous sanguineous solferino stammel testaceous umber vermeil vermilion vermillion vinaceous brick burgundy cherry coral raspberry rose ruby salmon strawberry maroon miniaceous minium modena nacarat phoeniceous pink pinkish ponceau puccoon puniceous rectory red reddish Rufous sanguineous solferino stammel testaceous umber vermeil
yellow beige buff citreous citrine gamboge lurid nankeen ochre tawny yellow yellowish apricot butter buttercup butterscotch canary chrome gold goldenrod lemon mustard peach persimmon primrose saffron suede sulphur tangerine
gold metallic
silver metallic
copper metallic
bronze metallic
black blackish ebony jet_black licorice melanic morel nigrine piceous
white blond chalk cream cretaceous ivory magnolia off-white whey white whitish
grey ashen cesious columbine gray grayish grey greyish hoary taupe
transparent
reflective
metallic argent brass bronze copper gold metallic platinum silver

Currency

Captures the amount and type of currency from the user utterance. For example, This handbag is priced at 200 dollars where 200 is the amount and USD is the currency.

This entity type recognizes:

  • Full currency names (Dollar, Rupees, Indian National Rupees, Dinar)
  • Currency symbols ($, S$, £)
  • Standard currency abbreviations (INR, USD)
  • Commonly used slang for currencies (Buck, Nickel, Dime, Quid, Loonie, Toonie, Benjamin, Jackson, Hamilton.)
Note: Currency names are not disambiguated based on your previous usage. So, if the user utterance consists of a dollar first time, USD might rank higher than SGD (Singapore Dollar) because of the popularity. But, if the user explicitly mentions SGD, the virtual assistant continues to consider SGD for the dollar from there.
"CurrencyEntity":[
{
"code": "SGD",
"amount": 20
}

Custom

Define a regular expression to validate the user input in the Expression field for a custom entity. You can directly enter the expression or use a Content, Context, or Environment variable that contains a regular expression or concept as the value.

See a few examples in the table below.

Type Example Input in the Field Acceptable Sample Input
Regular Expression [a-zA-Z]{3}[-]\d{4} NLP-1234
Concept Variable ~car_brands Tesla
Content, Context, or
Environment Variable
content.TicketNumber
context.TicketNumber
env.TicketNumber
Where the variable TicketNumber
contains the regular expression
[a-zA-Z]{3}[-]\d{4} as the value.
NLP-1234
or
TKT-1234
Note: The dialog will fail if the expression is null. If the null expression is desired, bot developers can always use the preConditions entity rule as an alternative to skip over a node in the flow.

For more information, refer to Regex Expressions.

Composite

Composite entities are used to capture multiple entity values in one entity.

For example, consider the sales inquiries for flight bookings. Typical queries can be of the form: I am interested in flying first class from Los Angeles to New York City, tomorrow. or I want to fly to NYC tomorrow.

As you can see, the virtual assistant typically needs to process a combination of details like flight class, departure city, destination city and travel date to respond to those queries.

These scenarios are taken care of by the Composite Entity Type. Refer here to know more about Composite Entity Types.

Date

Captures a date mention from a user utterance. For example, Book a flight on the 10th of October returns the value for Date in ISO8601 date format is YYYY-MM-DD.

The virtual assistant recognizes all possible ways and formats of dates, like:

  • Formatted dates like YYYY-MM-DD, DD-MM-YYYY, DD-MM-YY, YYYY/MM/DD, DD/MM/YYYY, DD/MM/YY, YYYY.MM.DD, DD.MM.YYYY, DD.MM.YY.
  • All number dates like YMD and DMY for 20180518 and 09102013.
  • Formatted dates with space separators like YYYY MM DD. dd/mm yyyy, dd-mm, dd-mm-yyyy, dd-mm-yy, mm-dd, dd / mm / yyyy, dd . mm . yyyy, ddmm yyyy, mmdd.
  • Named months like yyyy/dd/monthNames or yyyy-dd-monthNames or dd.monthNames.yyyy 2018/28/Dec or 2018-28-Dec or 28.Dec.2018.
  • Absolute dates related to now like today, tomorrow, yesterday, tonight, this evening, this afternoon, day after tomorrow, the day before yesterday, yesterday morning, tomorrow night, tomorrow for 1 hour, 3 days ago, 24 hours ago, in 3 days, 2 months hence, this day next month last year, next June, June 26 of the year after next, in a week, 2 weeks ago, 22nd of this month, Next month this day, Next 25th, This month 30th, 27th of this month, 3rdmonth, 2nd of the month.
  • Named dates like Christmas Day, Christmas Eve, Memorial Day this year, Thanksgiving 2018, last Thanksgiving, week after Thanksgiving, Passover, a day before the new year, day after Christmas.
  • Relative dates from absolute like 2 more days from tomorrow, 3 days after July 4, 3 days from now, 5days from today, Need two more days, in 2 days.
  • Weekdays like Saturday, coming Monday, Sunday, Saturday, next weekend, First Saturday of the upcoming year, First Sunday of the upcoming month, first Saturday of next month, First Sunday of next year.
"entities":
{
"DateEntity": "1982-04-13"
}

Date Time

Captures a date grouping along with time in a user utterance.

For example, Book a flight on the 10 th of October at 6 pm, returns the value for Date Time in ISO8601 date format as YYYYY-MM-DDThh: mm: ss.sTZD.

The virtual assistant recognizes all possible ways and formats to express date and time.

"entities":
{
"DateEntity": "2017-10-10T18:00:00+05:30"
}

Date Period

Captures start date and end date from the user input. For example, Book the hotel for five days starting May 5. If the user input does not include one or both of the dates, the virtual assistant prompts the user to provide the necessary input.

Note: Unlike other entities, Date Period entities allow you to enter two sets of user and errors prompts:

  1. User and Error Prompt for From Date.
  2. User and Error Prompt for To Date.

The following table lists how the entity works in different scenarios:

Input Type Virtual Assistant Behaviour
Does not include both From and To dates [For example, Book hotel]. Shows User Prompts for From Date to the user
Includes either From or To date [For example, Book a hotel from 15th Aug] Shows User Prompts for From Date or User Prompts for To Date based on which is missing from the input
Includes implicit reference to From Date and duration [For example, Book a hotel for five days starting from Tuesday] Determines both dates
Includes From Date and duration [For example, Book a hotel for five days from 15th Nov] Determines both dates
Includes From Date and To Date [For example, Book a hotel from 5th to 10th] Determines both dates

Description

Captures statements or paragraphs of text from the user utterance. The value for Description is returned as a string and can include wild characters.

Note: Multi-Item is not available for this entity type.
"entities":
{
"Description": "text here"
}

Email

Captures email address from the utterance. For example, “Send an email to help@koremessenger.com” returns the value of Email as a string.

"entities":
{
"Email": "help@koremessenger.com"
}

List of Items (enumerated)

Display a list of values to the end-user. To define the list type,

  1. Click the Settings icon next to the List of items (enumerated) Type field.
  2. On the List of items (enumerated) Setup page, define one of the following list types.
    • Static List
    • List from Context

This feature is not fully supported in all languages Click here for details.

  • Static List – Enter the Display Name, Value, and Synonyms for the key. Set up Auto-Correction value for the user inputs.
  • List from Context – Define a context variable to use for this item in the following fields:
    • Specify Context Variable to Use – Defines the context object type. For example, EnterpriseContext, BotContext, UserContexts, or session variables such as context.entities. Entercontext.; select a context object type.
    • Display Name Key – The name displayed to the end-user.
    • Value Key – The key that represents the value of the item in the list.
    • Synonyms Key – Enter one or more synonyms for the key (Click here for details).
  • Auto-Correction– Set up auto-correct thresholds for the LOV entity type so that it not only accepts exact matches but also closest utterances with small variations. For example, let us consider that a list value called Apple for which a typo such as appel is accepted based on your threshold settings. The Auto-Correction setting works in the following way:
    1. The virtual assistant identifies the number of letters to be changed (inserts, deletes, or replaces) in user input to match it to a value in the list.
    2. The number is converted to a percentage of the total number of letters in the input.
    3. The list value with the highest similarity is considered as input if the score is greater than or equal to the configured percentage.
    Spell correction does not apply to dictionary words or alphanumeric inputs.

Post v7.1, the following keys are added to the context object for the below-mentioned usage:

  • ambiguousEntityValues: This key contains values when the user input for a multi-item entity is ambiguous. Using this, you can check if any ambiguous values were identified and construct the flow to resolve the ambiguity. This key is reset if the entity is re-prompted during the dialog. The values are an array of JSON objects, each object containing title, value, and synonym.
  • synonymsUsed: This key holds the synonym used to identify the item. You can use this value to personalize the virtual assistant response accordingly if needed. This key is reset if the entity is re-prompted during the dialog.

You can also choose to present the list of values as part of the entity prompt to the user. For this, you need to set the Display List of Values to ‘Yes, use channel specific standard formatting for default messages and show available list of values to end user’. This option works only with the Plain Text prompts. This list will not be presented if JavaScript based templates are used as prompts.


Note: The ‘Display List of Values’ option is available only for the List of Items (enum). It is NOT available for the List of Items (lookup).

List of Items (lookup)

Display a list of values to the end-user. To define the lookup list,

  1. Click the Settings icon next to the List of items (lookup) Type field.
  2. On the List of items (lookup) Setup page, define one of the following list types.
    • Static List
    • Remote List

This feature is not fully supported in all languages. Click here for details.

Static List: Use Static List to define the entity values as one of the following list types:

  • JSON tab – Enter a list of key/value pairs and synonyms (Click here for more). For example:
    [{
    "title": "United States",
    "value": "US",
    "synonyms": ["united states", "USA", "US", "U.S.A", "America"]
    },
    {
    "title": "John F. Kennedy International Airport",
    "value": "JFK",
    "synonyms": ["John F. Kennedy International Airport", "New York International Airport", "JFK"]
    }
    ]
  • Editor tab – Enter the Display Name, Value, and Synonyms for the key.
  • Upload File – Click Upload File to locate a JSON formatted file list or a .csv file formatted list of key/value pairs. For example,
    CSV File Format

Post v7.1, the following keys are added to the context object for the below-mentioned usage:

  • ambiguousEntityValues: This key contains values when the user input for a multi-item entity is ambiguous. Using this, you can check if any ambiguous values were identified and construct the flow to resolve the ambiguity. This key is reset if the entity is re-prompted during the dialog. The values are an array of JSON objects, each object containing title, value, and synonym.
  • synonymsUsed: This key holds the synonym used to identify the item. You can use this value to personalize the virtual assistant response accordingly if needed. This key is reset if the entity is re-prompted during the dialog.

Remote List

Remote List is used when the entity extraction needs to be done by an external service due to security restrictions or any other reasons. This can also be used to handle large data.

The steps involved are as follows:

  1. Define the Service Call: You can set up a service call similar to how a service node is currently set up. You can set headers, body (for POST), etc,. (Click here for more).
    The external service invoked must have a provision to accept and handle the user utterance data that the platform populates. The context.inputData object with the following fields is used for that purpose:

    • input – An array containing the list of inputs received from the user for the current dialog.
    • usedUp – Index form of words that are already used for other entities or intents. The format is x-y-z where
      • x represents the sentence/utterance index (0 till n).
      • y represents the start index of the used up word within the x utterance.
      • z represents the end index of the used up word.
      • sentenceindex-x-x represents no used up words in that sentence.
      • If multiple words are used-up in a single sentence, these should be entered as comma-separated values.
    • isMultiItem – Flag should be set if multiple values are expected from the service call.
        "inputData": {
          "input": [
            "get account"
          ],
          "usedUp": [
            "0-x-x"
          ],
          "isMultiItem": false
        }
  2. Map Response: You can map a response from the service call with the following fields:
    • The context variable that holds the response data from the service call. This must be in an array format.
    • Display Key Name – Name used to refer to this field; this name is used when interacting with the user. For example, in a disambiguation scenario. This can be accessed using {{context.entities.<entity-name>.title}}.
    • Value Key – The field name in the response body from the service call that holds the value, the entity is assigned this value. This can be accessed using {{context.entities.<entity-name>.value}}.
    • Synonyms Key – The field containing the synonyms for this field, if any. This is the value that the user refers to. For example, in response to the disambiguation question. This can be accessed using {{context.entities.<entity-name>.synonym}}.
    • Matched Word Index – To indicate the words in the inputData that were used for entity extraction (in the same format as the usedUp value in the context.inputData object). This is used by the platform to mark the word as used in the user utterance.

Flow: The platform will:

  1. Populate the context.inputData with the values mentioned above.
  2. Make the service call to fetch the entity values passing the values as configured in the service call.
  3. Use the values returned as per Response Mapping:
    • If a single value is returned by the remote system, then that value is assigned to the entity.
    • If multiple values are returned by the remote system, the platform extracts the entity from this list.
      • If a match is found, it is assigned to the entity.
      • If no match is found, the user is presented with a list of values to choose from. If the user input matches with any of the items in the list, then it is assigned to the entity. If the user input does not match any of the items, then the input is updated in the context object and another call to the remote service is initiated.
      • If one or more matches are found, then it is considered ambiguous and the user is presented with the choices.  If the user input matches with any of the items in the list, then it is assigned to the entity. If the user input does not match any of the items, then the input is updated in the context object and another call to the remote service is initiated.
    • If the entity is marked as a multi-item entity, then the list of values returned from the remote server is re-evaluated and all valid (valid as per entity type) list items are assigned as values for the entity. Invalid list items are discarded.
  4. Handle the following exceptions:
    • In case the response from the service call is empty or not in the expected format, the User Prompt settings for the entity are used to prompt the user for input.
    • In case of ambiguity, for example, when the service returns multiple values when one is expected, the user is prompted to choose one from the list of values returned by the service.

Location

Captures the location details of a city or state from a user utterance.

For example, in Bellagio, Las Vegas the entity captures the location details of Las Vegas. The entity returns the location of the object with address and coordinates as a JSON response.

"Location":
{
"formatted_address": "Las Vegas, NV, USA",
"lat": 36.1699412,
"lng": -115.1398296
}

Number

Captures a number from a user utterance. For example, Book a room for 16 people. In this example, the value 16 is returned as the number.

The virtual assistants platform recognizes the spelled-out numbers and also standard abbreviations such as 1M. A consecutive number of words are combined into one number. For example, one two three becomes 123.

Note: The maximum number of digits allowed is 18.

"entities":
{
"NumberEntity": 16
}

Person Name

Captures the full name of a person from a user utterance.

For example, Send an email to John Smith, where John Smith is identified as Person Name.

The Kore.ai virtual assistant platform assumes that the first word in the user utterance with capital letters as the first name along and the next two words in camel case as a part of the name.

For example, if the user utterance is I want to talk to John Smith, it recognizes John Smith as the name. If the utterance is I want to talk to John smith immediately it recognizes only John as the name.

"entities":
{
"PersonName": "John Smith"
}

Percentage

Captures the percentage value from a user utterance.

For example, The chance of rain today is more than 60 percent, where 60 is the percentage and is returned as a float value of 0.6 in a range of (0.0-1.0). It supports the percent, percentage, and the % sign.

"entities":
{
"PercentageEntity": 0.6
}

Phone Number

Captures the standard 3-digit to 12-digit phone number(s) from a user utterance.

For example, Please call 4075551212, the value for the Phone Number is 4075551212 and is returned as a number. The virtual assistant now extracts the correct phone number when provided in a non-standard format like (407)-407-4077 or 407.407.4077 without prompting the user to enter the phone number in the correct format. This is applicable to all the Phone Number based entities by default.

"entities":
{
"PhoneNumber": "+4075551212"
}

Support for Phone Numbers in Arabic

The Platform now supports phone numbers in the Arabic language, where the virtual assistant identifies the Arabic number given in words from the user utterance (text) and converts it to the relevant digit.

For example:

The input أربعة صفر سبعة. أربعة صفر سبعة. أربعة صفر سبعة سبعة is converted to 407 407 407 where “.” is identified as a separator.

Quantity

Captures the quantity in an utterance with the following details from the user utterance:

  • Type of quantity (length, area, volume, etc.).
  • Unit of measurement (kilometers, square kilometer, cubic meter, etc.).
  • The amount (100, 500, 1.5, etc.).

When you select the Quantity entity type, you also need to select a unit type for the quantity and the default measure.

For example, for capturing volumes, select Volume as the Unity Type and Milliliters as the Default Unit. So, if a user utterance is Add 500 ml of water, the following JSON is returned:

"Quantity":
{
"unit": "millilitre",
"amount": 500,
"type": "volume",
"source": "500 ml"
}

The virtual assistants platform identifies all these quantities and unites along with the standard abbreviations, codes, and symbols.

Type Units
Length
  • kilometer
  • meter
  • centimeter
  • inch
  • foot
  • yard
  • mile
Area
  • square kilometer
  • square meter
  • square mile
  • square yard
  • square foot
Volume
  • cubic meter
  • liter
  • milliliter
  • gallon
  • ounce
Time
  • hour
  • minute
  • second
  • millisecond
Speed
  • meters per second
  • kilometers per hour
  • miles per hour
Pressure
  • pascal
  • atmosphere
  • bar
Energy
  • calorie
  • kilocalorie
  • watt-hour
  • kilowatt-hour
Memory
  • bit
  • byte
  • kilobyte
  • megabyte
  • terabyte
  • gigabyte
Weight
  • ton
  • kilogram
  • gram
  • pound
  • ounce
Angle
  • degree
Age
  • day
  • week
  • month
  • year
  • decade
  • century
Temperature
  • celsius
  • fahrenheit

String

Works identical to the Description entity type but limited to one sentence.

There won’t be any validations done on the user utterance for string entities unless trained. Hence this entity type is used as a last resort when your requirement is not met with any of the platform supported entity types.

Time

Capture time in a user utterance. For example, Set my alarm for 6 am, return the value of Time in ISO 8601 time format as hh:mm:ss.sZD.
It recognizes the following denotations:

    • am, a.m., AM, pm, p.m., PM, P.M.
    • Numbers spelled out. For example, Six AM.
    • Morning and evening. For example, Six in the evening.
"entities":
{
"TimeEntity": "T06:00:00+05:30"
}

Time Zone

A time zone. Eastern Standard Time converts the timezone into GMT and stores the resulting value. For example, if you type EST, it is stored as -6:00. The virtual assistants platform recognizes the standard time zones.

"entities":
{
"TimeZoneEntity": "-06:00"
}

URL

Captures a web URL from the utterance. The virtual assistant recognizes all standard formats of URLs. For example, Visit our website: www.kore.ai. The value for the URL is returned as a string.

"entities":
{
"URLEntity": "www.kore.ai"
}

Zip Code

Captures a US zip code from the user utterance. For example, What is the weather for 32746? The value for Zip Code is 32746 and is returned as a string.

"entities":
{
"ZipcodeEntity": "32746"
}
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