tweet_topic_single / README.md
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metadata
language:
  - en
license:
  - other
multilinguality:
  - monolingual
size_categories:
  - 1k<10K
task_categories:
  - text-classification
task_ids:
  - sentiment-classification
pretty_name: TweetTopicSingle

Dataset Card for "cardiff_nlp/tweet_topic_single"

Dataset Description

  • Paper: TBA
  • Dataset: Tweet Topic Dataset
  • Domain: Twitter
  • Number of Class: 6

Dataset Summary

Topic classification dataset on Twitter with single label per tweet.

  • Label Types: arts_&_culture, business_&_entrepreneurs, pop_culture, daily_life, sports_&_gaming, science_&_technology

Dataset Structure

Data Instances

An example of train looks as follows.

{
    "text": "Game day for {{USERNAME}} U18\u2019s against {{USERNAME}} U18\u2019s. Even though it\u2019s a \u2018home\u2019 game for the people that have settled in Mid Wales it\u2019s still a 4 hour round trip for us up to Colwyn Bay. Still enjoy it though!",
    "date": "2019-09-08",
    "label": 4,
    "id": 1170606779568463874,
    "label_name": "sports_&_gaming"
}

Label ID

The label2id dictionary can be found at here.

{
    "arts_&_culture": 0,
    "business_&_entrepreneurs": 1,
    "pop_culture": 2,
    "daily_life": 3,
    "sports_&_gaming": 4,
    "science_&_technology": 5
}

Data Splits

Citation Information

TBA