List entity

Important

LUIS will be retired on October 1st 2025 and starting April 1st 2023 you will not be able to create new LUIS resources. We recommend migrating your LUIS applications to conversational language understanding to benefit from continued product support and multilingual capabilities.

List entities represent a fixed, closed set of related words along with their synonyms. LUIS does not discover additional values for list entities. Use the Recommend feature to see suggestions for new words based on the current list. If there is more than one list entity with the same value, each entity is returned in the endpoint query.

A list entity isn't machine-learned. It is an exact text match. LUIS marks any match to an item in any list as an entity in the response.

The entity is a good fit when the text data:

  • Are a known set.
  • Doesn't change often. If you need to change the list often or want the list to self-expand, a simple entity boosted with a phrase list is a better choice.
  • The set doesn't exceed the maximum LUIS boundaries for this entity type.
  • The text in the utterance is a case-insensitive match with a synonym or the canonical name. LUIS doesn't use the list beyond the match. Fuzzy matching, stemming, plurals, and other variations are not resolved with a list entity. To manage variations, consider using a pattern with the optional text syntax.

list entity

Example .json to import into list entity

You can import values into an existing list entity using the following .json format:

[
    {
        "canonicalForm": "Blue",
        "list": [
            "navy",
            "royal",
            "baby"
        ]
    },
    {
        "canonicalForm": "Green",
        "list": [
            "kelly",
            "forest",
            "avacado"
        ]
    }
]

Example JSON response

Suppose the app has a list, named Cities, allowing for variations of city names including city of airport (Sea-tac), airport code (SEA), postal zip code (98101), and phone area code (206).

List item Item synonyms
Seattle sea-tac, sea, 98101, 206, +1
Paris cdg, roissy, ory, 75001, 1, +33

book 2 tickets to paris

In the previous utterance, the word paris is mapped to the paris item as part of the Cities list entity. The list entity matches both the item's normalized name as well as the item synonyms.

  "entities": [
    {
      "entity": "paris",
      "type": "Cities",
      "startIndex": 18,
      "endIndex": 22,
      "resolution": {
        "values": [
          "Paris"
        ]
      }
    }
  ]
Data object Entity name Value
List Entity Cities paris

Next steps

Learn more about entities: