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SST-2, Irony, IronyB, TREC6, and SNIPS
The dataset used in this paper is SST-2, Irony, IronyB, TREC6, and SNIPS. -
Socher et al. (2013) dataset
The dataset used in the paper is a large-scale corpus of movie reviews from the Socher et al. (2013) dataset. -
Rotten Tomatoes
The Rotten Tomatoes dataset has 5331 positive and 5331 negative review sentences. -
Amazon dataset
The Amazon dataset is used to evaluate the performance of the proposed approach. It consists of 2000 users, 1500 items, 86690 reviews, 7219 number ratings, 3.6113 average number... -
Text Classification
Text classification dataset -
Text, Tabular and Image Classification
Text, tabular and image classification datasets -
Tweet Sentiment Extraction
The Tweet Sentiment Extraction dataset contains positive, negative, and neutral tweets with human-annotated rationales. -
Movie Reviews
The Movie Reviews dataset contains positive and negative movie reviews with rationales annotated by humans to support classification. -
IMDb Reviews
The dataset consists of 25000 reviews from IMDb. -
Yelp Review Dataset
The Yelp review dataset contains hotel and restaurant reviews filtered (spam) and recommended (legitimate) by Yelp. -
Yelp Dataset
The Yelp Dataset contains 1.6M reviews and 500K tips by 366K users for 61K businesses; 481K business attributes, such as hours, parking availability, ambience; and check-ins for... -
IMDB Sentiment Classification
The IMDB sentiment classification dataset is used for text classification tasks. -
Yelp Dataset Challenge
The Yelp dataset challenge contains reviews and images of restaurants, with the goal of recommending images for each review. -
Penn Treebank
The Penn Treebank dataset contains one million words of 1989 Wall Street Journal material annotated in Treebank II style, with 42k sentences of varying lengths.