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Dataset Card for KVRET

Dataset Summary

In an effort to help alleviate this problem, we release a corpus of 3,031 multi-turn dialogues in three distinct domains appropriate for an in-car assistant: calendar scheduling, weather information retrieval, and point-of-interest navigation. Our dialogues are grounded through knowledge bases ensuring that they are versatile in their natural language without being completely free form.

  • How to get the transformed data from original data:
    • Run python preprocess.py in the current directory.
  • Main changes of the transformation:
    • Create user dialogue acts and state according to original annotation.
    • Put dialogue level kb into system side db_results.
    • Skip repeated turns and empty dialogue.
  • Annotations:
    • user dialogue acts, state, db_results.

Supported Tasks and Leaderboards

NLU, DST, Context-to-response

Languages

English

Data Splits

split dialogues utterances avg_utt avg_tokens avg_domains cat slot match(state) cat slot match(goal) cat slot match(dialogue act) non-cat slot span(dialogue act)
train 2424 12720 5.25 8.02 1 - - - 98.07
validation 302 1566 5.19 7.93 1 - - - 97.62
test 304 1627 5.35 7.7 1 - - - 97.72
all 3030 15913 5.25 7.98 1 - - - 97.99

3 domains: ['schedule', 'weather', 'navigate']

  • cat slot match: how many values of categorical slots are in the possible values of ontology in percentage.
  • non-cat slot span: how many values of non-categorical slots have span annotation in percentage.

Citation

@inproceedings{eric-etal-2017-key,
    title = "Key-Value Retrieval Networks for Task-Oriented Dialogue",
    author = "Eric, Mihail  and
      Krishnan, Lakshmi  and
      Charette, Francois  and
      Manning, Christopher D.",
    booktitle = "Proceedings of the 18th Annual {SIG}dial Meeting on Discourse and Dialogue",
    year = "2017",
    publisher = "Association for Computational Linguistics",
    url = "https://aclanthology.org/W17-5506",
}

Licensing Information

TODO