Datasets:

Languages:
English
ArXiv:
License:
Dataset Viewer

The viewer is disabled because this dataset repo requires arbitrary Python code execution. Please consider removing the loading script and relying on automated data support (you can use convert_to_parquet from the datasets library). If this is not possible, please open a discussion for direct help.

Dataset Card for "cardiffnlp/tweet_topic_multi"

Dataset Summary

This is the official repository of TweetTopic ("Twitter Topic Classification , COLING main conference 2022"), a topic classification dataset on Twitter with 19 labels. Each instance of TweetTopic comes with a timestamp which distributes from September 2019 to August 2021. See cardiffnlp/tweet_topic_single for single label version of TweetTopic. The tweet collection used in TweetTopic is same as what used in TweetNER7. The dataset is integrated in TweetNLP too.

Preprocessing

We pre-process tweets before the annotation to normalize some artifacts, converting URLs into a special token {{URL}} and non-verified usernames into {{USERNAME}}. For verified usernames, we replace its display name (or account name) with symbols {@}. For example, a tweet

Get the all-analog Classic Vinyl Edition
of "Takin' Off" Album from @herbiehancock
via @bluenoterecords link below: 
http://bluenote.lnk.to/AlbumOfTheWeek

is transformed into the following text.

Get the all-analog Classic Vinyl Edition
of "Takin' Off" Album from {@herbiehancock@}
via {@bluenoterecords@} link below: {{URL}}

A simple function to format tweet follows below.

import re
from urlextract import URLExtract
extractor = URLExtract()

def format_tweet(tweet):
    # mask web urls
    urls = extractor.find_urls(tweet)
    for url in urls:
        tweet = tweet.replace(url, "{{URL}}")
    # format twitter account
    tweet = re.sub(r"\b(\s*)(@[\S]+)\b", r'\1{\2@}', tweet)
    return tweet

target = """Get the all-analog Classic Vinyl Edition of "Takin' Off" Album from @herbiehancock via @bluenoterecords link below: http://bluenote.lnk.to/AlbumOfTheWeek"""
target_format = format_tweet(target)
print(target_format)
'Get the all-analog Classic Vinyl Edition of "Takin\' Off" Album from {@herbiehancock@} via {@bluenoterecords@} link below: {{URL}}'

Data Splits

split number of texts description
test_2020 573 test dataset from September 2019 to August 2020
test_2021 1679 test dataset from September 2020 to August 2021
train_2020 4585 training dataset from September 2019 to August 2020
train_2021 1505 training dataset from September 2020 to August 2021
train_all 6090 combined training dataset of train_2020 and train_2021
validation_2020 573 validation dataset from September 2019 to August 2020
validation_2021 188 validation dataset from September 2020 to August 2021
train_random 4564 randomly sampled training dataset with the same size as train_2020 from train_all
validation_random 573 randomly sampled training dataset with the same size as validation_2020 from validation_all
test_coling2022_random 5536 random split used in the COLING 2022 paper
train_coling2022_random 5731 random split used in the COLING 2022 paper
test_coling2022 5536 temporal split used in the COLING 2022 paper
train_coling2022 5731 temporal split used in the COLING 2022 paper

For the temporal-shift setting, model should be trained on train_2020 with validation_2020 and evaluate on test_2021. In general, model would be trained on train_all, the most representative training set with validation_2021 and evaluate on test_2021.

IMPORTANT NOTE: To get a result that is comparable with the results of the COLING 2022 Tweet Topic paper, please use train_coling2022 and test_coling2022 for temporal-shift, and train_coling2022_random and test_coling2022_random fir random split (the coling2022 split does not have validation set).

Models

model training data F1 F1 (macro) Accuracy
cardiffnlp/roberta-large-tweet-topic-multi-all all (2020 + 2021) 0.763104 0.620257 0.536629
cardiffnlp/roberta-base-tweet-topic-multi-all all (2020 + 2021) 0.751814 0.600782 0.531864
cardiffnlp/twitter-roberta-base-2019-90m-tweet-topic-multi-all all (2020 + 2021) 0.762513 0.603533 0.547945
cardiffnlp/twitter-roberta-base-dec2020-tweet-topic-multi-all all (2020 + 2021) 0.759917 0.59901 0.536033
cardiffnlp/twitter-roberta-base-dec2021-tweet-topic-multi-all all (2020 + 2021) 0.764767 0.618702 0.548541
cardiffnlp/roberta-large-tweet-topic-multi-2020 2020 only 0.732366 0.579456 0.493746
cardiffnlp/roberta-base-tweet-topic-multi-2020 2020 only 0.725229 0.561261 0.499107
cardiffnlp/twitter-roberta-base-2019-90m-tweet-topic-multi-2020 2020 only 0.73671 0.565624 0.513401
cardiffnlp/twitter-roberta-base-dec2020-tweet-topic-multi-2020 2020 only 0.729446 0.534799 0.50268
cardiffnlp/twitter-roberta-base-dec2021-tweet-topic-multi-2020 2020 only 0.731106 0.532141 0.509827

Model fine-tuning script can be found here.

Dataset Structure

Data Instances

An example of train looks as follows.

{
    "date": "2021-03-07",
    "text": "The latest The Movie theater Daily! {{URL}} Thanks to {{USERNAME}} {{USERNAME}} {{USERNAME}} #lunchtimeread #amc1000",
    "id": "1368464923370676231",
    "label": [0, 0, 0, 0, 0, 0, 1, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0],
    "label_name": ["film_tv_&_video"]
}

Labels

0: arts_&_culture 5: fashion_&_style 10: learning_&_educational 15: science_&_technology
1: business_&_entrepreneurs 6: film_tv_&_video 11: music 16: sports
2: celebrity_&_pop_culture 7: fitness_&_health 12: news_&_social_concern 17: travel_&_adventure
3: diaries_&_daily_life 8: food_&_dining 13: other_hobbies 18: youth_&_student_life
4: family 9: gaming 14: relationships

Annotation instructions can be found here.

The label2id dictionary can be found here.

Citation Information

@inproceedings{dimosthenis-etal-2022-twitter,
    title = "{T}witter {T}opic {C}lassification",
    author = "Antypas, Dimosthenis  and
    Ushio, Asahi  and
    Camacho-Collados, Jose  and
    Neves, Leonardo  and
    Silva, Vitor  and
    Barbieri, Francesco",
    booktitle = "Proceedings of the 29th International Conference on Computational Linguistics",
    month = oct,
    year = "2022",
    address = "Gyeongju, Republic of Korea",
    publisher = "International Committee on Computational Linguistics"
}
Downloads last month
224

Models trained or fine-tuned on cardiffnlp/tweet_topic_multi

Collection including cardiffnlp/tweet_topic_multi