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metadata
license: unknown
task_categories:
  - text-classification
language:
  - en
size_categories:
  - 1M<n<10M

About Dataset

This dataset consists of a few million Amazon customer reviews (input text) and star ratings (output labels) for training fastText models for sentiment analysis.

The dataset is based on real business data at a reasonable scale, which can be trained on a modest laptop in minutes.

Content

The fastText supervised learning tutorial requires data in this format:

__label__<X> __label__<Y> ... <Text>

  • X and Y are the class names, without quotes and all on one line.
  • In this dataset, the classes are __label__1 and __label__2, with only one class per row.
  • __label__1 corresponds to 1- and 2-star reviews, while __label__2 corresponds to 4- and 5-star reviews.
  • 3-star reviews (neutral sentiment) are excluded from the dataset.
  • Review titles are prepended to the text, followed by a colon and a space.
  • Most reviews are in English, with a few in other languages like Spanish.

Source

The data was obtained from Xiang Zhang's Google Drive directory in .csv format, which was then adapted for use with fastText.

Training and Testing

Follow the instructions in the fastText supervised learning tutorial to set up the directory.

Training

To train the model, use:

./fasttext supervised -input train.ft.txt -output model_amzn

Acknowledgments

Dataset obtained from https://www.kaggle.com/datasets/bittlingmayer/amazonreviews/data