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Entity Recognition cognitive skill (v3)

The Entity Recognition skill (v3) extracts entities of different types from text. These entities fall under 14 distinct categories, ranging from people and organizations to URLs and phone numbers. This skill uses the Named Entity Recognition machine learning models provided by Azure AI Language.

Note

This skill is bound to Azure AI services and requires a billable resource for transactions that exceed 20 documents per indexer per day. Execution of built-in skills is charged at the existing Azure AI services pay-as-you go price.

@odata.type

Microsoft.Skills.Text.V3.EntityRecognitionSkill

Data limits

The maximum size of a record should be 50,000 characters as measured by String.Length. If you need to break up your data before sending it to the EntityRecognition skill, consider using the Text Split skill. When using a split skill, set the page length to 5000 for the best performance.

Skill parameters

Parameters are case-sensitive and are all optional.

Parameter name Description
categories Array of categories that should be extracted. Possible category types: "Person", "Location", "Organization", "Quantity", "DateTime", "URL", "Email", "personType", "Event", "Product", "Skill", "Address", "phoneNumber", "ipAddress". If no category is provided, all types are returned.
defaultLanguageCode Language code of the input text. If the default language code is not specified, English (en) will be used as the default language code.
See the full list of supported languages. Not all entity categories are supported for all languages; see note below.
minimumPrecision A value between 0 and 1. If the confidence score (in the namedEntities output) is lower than this value, the entity is not returned. The default is 0.
modelVersion (Optional) Specifies the version of the model to use when calling the entity recognition API. It will default to the latest available when not specified. We recommend you do not specify this value unless it's necessary.

Skill inputs

Input name Description
languageCode A string indicating the language of the records. If this parameter is not specified, the default language code will be used to analyze the records.
See the full list of supported languages.
text The text to analyze.

Skill outputs

Note

Not all entity categories are supported for all languages. See Supported Named Entity Recognition (NER) entity categories to know which entity categories are supported for the language you will be using.

Output name Description
persons An array of strings where each string represents the name of a person.
locations An array of strings where each string represents a location.
organizations An array of strings where each string represents an organization.
quantities An array of strings where each string represents a quantity.
dateTimes An array of strings where each string represents a DateTime (as it appears in the text) value.
urls An array of strings where each string represents a URL
emails An array of strings where each string represents an email
personTypes An array of strings where each string represents a PersonType
events An array of strings where each string represents an event
products An array of strings where each string represents a product
skills An array of strings where each string represents a skill
addresses An array of strings where each string represents an address
phoneNumbers An array of strings where each string represents a telephone number
ipAddresses An array of strings where each string represents an IP Address
namedEntities An array of complex types that contains the following fields:
  • category
  • subcategory
  • confidenceScore (Higher value means it's more to be a real entity)
  • length (The length(number of characters) of this entity)
  • offset (The location where it was found in the text)
  • text (The actual entity name as it appears in the text)

Sample definition

  {
    "@odata.type": "#Microsoft.Skills.Text.V3.EntityRecognitionSkill",
    "context": "/document",
    "categories": [ "Person", "Email"],
    "defaultLanguageCode": "en", 
    "minimumPrecision": 0.5, 
    "inputs": [
        {
            "name": "text", 
            "source": "/document/content"
        },
        {
            "name": "languageCode", 
            "source": "/document/language"
        }
    ],
    "outputs": [
        {
            "name": "persons", 
            "targetName": "people"
        },
        {
            "name": "emails", 
            "targetName": "emails"
        },
        {
            "name": "namedEntities", 
            "targetName": "namedEntities"
        }
    ]
  }

Sample input

{
    "values": [
      {
        "recordId": "1",
        "data":
           {
             "text": "Contoso Corporation was founded by Jean Martin. They can be reached at contact@contoso.com",
             "languageCode": "en"
           }
      }
    ]
}

Sample output

{
  "values": [
    {
      "recordId": "1",
      "data" : 
      {
        "people": [ "Jean Martin"],
        "emails":["contact@contoso.com"],
        "namedEntities": 
        [
          {
            "category": "Person",
            "subcategory": null,
            "length": 11,
            "offset": 35,
            "confidenceScore": 0.98,
            "text": "Jean Martin"
          },
          {
            "category": "Email",
            "subcategory": null,
            "length": 19,
            "offset": 71,
            "confidenceScore": 0.8,
            "text": "contact@contoso.com"
          }
        ],
      }
    }
  ]
}

The offsets returned for entities in the output of this skill are directly returned from the Language Service APIs, which means if you are using them to index into the original string, you should use the StringInfo class in .NET in order to extract the correct content. For more information, see Multilingual and emoji support in Language service features.

Warning cases

If the language code for the document is unsupported, a warning is returned and no entities are extracted.

See also