wisesight_sentiment / README.md
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metadata
annotations_creators:
  - expert-generated
language_creators:
  - found
language:
  - th
license:
  - cc0-1.0
multilinguality:
  - monolingual
size_categories:
  - 10K<n<100K
source_datasets:
  - original
task_categories:
  - text-classification
task_ids:
  - sentiment-classification
pretty_name: WisesightSentiment
dataset_info:
  features:
    - name: texts
      dtype: string
    - name: category
      dtype:
        class_label:
          names:
            '0': pos
            '1': neu
            '2': neg
            '3': q
  config_name: wisesight_sentiment
  splits:
    - name: train
      num_bytes: 5328819
      num_examples: 21628
    - name: validation
      num_bytes: 593570
      num_examples: 2404
    - name: test
      num_bytes: 662137
      num_examples: 2671
  download_size: 2102326
  dataset_size: 6584526
train-eval-index:
  - config: wisesight_sentiment
    task: text-classification
    task_id: multi_class_classification
    splits:
      train_split: train
      eval_split: test
    col_mapping:
      texts: text
      category: target
    metrics:
      - type: accuracy
        name: Accuracy
      - type: f1
        name: F1 macro
        args:
          average: macro
      - type: f1
        name: F1 micro
        args:
          average: micro
      - type: f1
        name: F1 weighted
        args:
          average: weighted
      - type: precision
        name: Precision macro
        args:
          average: macro
      - type: precision
        name: Precision micro
        args:
          average: micro
      - type: precision
        name: Precision weighted
        args:
          average: weighted
      - type: recall
        name: Recall macro
        args:
          average: macro
      - type: recall
        name: Recall micro
        args:
          average: micro
      - type: recall
        name: Recall weighted
        args:
          average: weighted

Dataset Card for wisesight_sentiment

Table of Contents

Dataset Description

Dataset Summary

Wisesight Sentiment Corpus: Social media messages in Thai language with sentiment label (positive, neutral, negative, question)

  • Released to public domain under Creative Commons Zero v1.0 Universal license.
  • Labels: {"pos": 0, "neu": 1, "neg": 2, "q": 3}
  • Size: 26,737 messages
  • Language: Central Thai
  • Style: Informal and conversational. With some news headlines and advertisement.
  • Time period: Around 2016 to early 2019. With small amount from other period.
  • Domains: Mixed. Majority are consumer products and services (restaurants, cosmetics, drinks, car, hotels), with some current affairs.
  • Privacy:
    • Only messages that made available to the public on the internet (websites, blogs, social network sites).
    • For Facebook, this means the public comments (everyone can see) that made on a public page.
    • Private/protected messages and messages in groups, chat, and inbox are not included.
  • Alternations and modifications:
    • Keep in mind that this corpus does not statistically represent anything in the language register.
    • Large amount of messages are not in their original form. Personal data are removed or masked.
    • Duplicated, leading, and trailing whitespaces are removed. Other punctuations, symbols, and emojis are kept intact. (Mis)spellings are kept intact.
    • Messages longer than 2,000 characters are removed.
    • Long non-Thai messages are removed. Duplicated message (exact match) are removed.
  • More characteristics of the data can be explore this notebook

Supported Tasks and Leaderboards

Sentiment analysis / Kaggle Leaderboard

Languages

Thai

Dataset Structure

Data Instances

{'category': 'pos', 'texts': 'น่าสนนน'}
{'category': 'neu', 'texts': 'ครับ #phithanbkk'}
{'category': 'neg', 'texts': 'ซื้อแต่ผ้าอนามัยแบบเย็นมาค่ะ แบบว่าอีห่ากูนอนไม่ได้'}
{'category': 'q', 'texts': 'มีแอลกอฮอลมั้ยคะ'}

Data Fields

  • texts: texts
  • category: sentiment of texts ranging from pos (positive; 0), neu (neutral; 1), neg (negative; 2) and q (question; 3)

Data Splits

train valid test
# samples 21628 2404 2671
# neu 11795 1291 1453
# neg 5491 637 683
# pos 3866 434 478
# q 476 42 57
avg words 27.21 27.18 27.12
avg chars 89.82 89.50 90.36

Dataset Creation

Curation Rationale

Originally, the dataset was conceived for the In-class Kaggle Competition at Chulalongkorn university by Ekapol Chuangsuwanich (Faculty of Engineering, Chulalongkorn University). It has since become one of the benchmarks for sentiment analysis in Thai.

Source Data

Initial Data Collection and Normalization

  • Style: Informal and conversational. With some news headlines and advertisement.
  • Time period: Around 2016 to early 2019. With small amount from other period.
  • Domains: Mixed. Majority are consumer products and services (restaurants, cosmetics, drinks, car, hotels), with some current affairs.
  • Privacy:
    • Only messages that made available to the public on the internet (websites, blogs, social network sites).
    • For Facebook, this means the public comments (everyone can see) that made on a public page.
    • Private/protected messages and messages in groups, chat, and inbox are not included.
    • Usernames and non-public figure names are removed
    • Phone numbers are masked (e.g. 088-888-8888, 09-9999-9999, 0-2222-2222)
    • If you see any personal data still remain in the set, please tell us - so we can remove them.
  • Alternations and modifications:
    • Keep in mind that this corpus does not statistically represent anything in the language register.
    • Large amount of messages are not in their original form. Personal data are removed or masked.
    • Duplicated, leading, and trailing whitespaces are removed. Other punctuations, symbols, and emojis are kept intact.
    • (Mis)spellings are kept intact.
    • Messages longer than 2,000 characters are removed.
    • Long non-Thai messages are removed. Duplicated message (exact match) are removed.

Who are the source language producers?

Social media users in Thailand

Annotations

Annotation process

  • Sentiment values are assigned by human annotators.
  • A human annotator put his/her best effort to assign just one label, out of four, to a message.
  • Agreement, enjoyment, and satisfaction are positive. Disagreement, sadness, and disappointment are negative.
  • Showing interest in a topic or in a product is counted as positive. In this sense, a question about a particular product could has a positive sentiment value, if it shows the interest in the product.
  • Saying that other product or service is better is counted as negative.
  • General information or news title tend to be counted as neutral.

Who are the annotators?

Outsourced annotators hired by Wisesight (Thailand) Co., Ltd.

Personal and Sensitive Information

  • The authors tried to exclude any known personally identifiable information from this data set.
  • Usernames and non-public figure names are removed
  • Phone numbers are masked (e.g. 088-888-8888, 09-9999-9999, 0-2222-2222)
  • If you see any personal data still remain in the set, please tell us - so we can remove them.

Considerations for Using the Data

Social Impact of Dataset

  • wisesight_sentiment is the first and one of the few open datasets for sentiment analysis of social media data in Thai
  • There are risks of personal information that escape the anonymization process

Discussion of Biases

  • A message can be ambiguous. When possible, the judgement will be based solely on the text itself.
    • In some situation, like when the context is missing, the annotator may have to rely on his/her own world knowledge and just guess.
    • In some cases, the human annotator may have an access to the message's context, like an image. These additional information are not included as part of this corpus.

Other Known Limitations

  • The labels are imbalanced; over half of the texts are neu (neutral) whereas there are very few q (question).
  • Misspellings in social media texts make word tokenization process for Thai difficult, thus impacting the model performance

Additional Information

Dataset Curators

Thanks PyThaiNLP community, Kitsuchart Pasupa (Faculty of Information Technology, King Mongkut's Institute of Technology Ladkrabang), and Ekapol Chuangsuwanich (Faculty of Engineering, Chulalongkorn University) for advice. The original Kaggle competition, using the first version of this corpus, can be found at https://www.kaggle.com/c/wisesight-sentiment/

Licensing Information

  • If applicable, copyright of each message content belongs to the original poster.
  • Annotation data (labels) are released to public domain.
  • Wisesight (Thailand) Co., Ltd. helps facilitate the annotation, but does not necessarily agree upon the labels made by the human annotators. This annotation is for research purpose and does not reflect the professional work that Wisesight has been done for its customers.
  • The human annotator does not necessarily agree or disagree with the message. Likewise, the label he/she made to the message does not necessarily reflect his/her personal view towards the message.

Citation Information

Please cite the following if you make use of the dataset:

Arthit Suriyawongkul, Ekapol Chuangsuwanich, Pattarawat Chormai, and Charin Polpanumas. 2019. PyThaiNLP/wisesight-sentiment: First release. September.

BibTeX:

@software{bact_2019_3457447,
  author       = {Suriyawongkul, Arthit and
                  Chuangsuwanich, Ekapol and
                  Chormai, Pattarawat and
                  Polpanumas, Charin},
  title        = {PyThaiNLP/wisesight-sentiment: First release},
  month        = sep,
  year         = 2019,
  publisher    = {Zenodo},
  version      = {v1.0},
  doi          = {10.5281/zenodo.3457447},
  url          = {https://doi.org/10.5281/zenodo.3457447}
}

Contributions

Thanks to @cstorm125 for adding this dataset.