short_text

Citation Author(s):
Ye
Wang
Submitted by:
Ye Wang
Last updated:
Fri, 12/27/2024 - 03:34
DOI:
10.21227/2ntg-y611
License:
0
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Abstract 

This collection includes multiple short text classification datasets designed for various natural language processing tasks. It contains several topic classification datasets, such as AG'News, Snippets, and TMNNews, which cover a wide range of topics and domains to evaluate the effectiveness of classification models. Additionally, the collection includes a binary sentiment classification dataset, such as Twitter, aimed at determining positive or negative sentiment in text. All datasets are provided in CSV format, with the first column representing the labels (e.g., categories or sentiments) and the second column containing the corresponding text content. These datasets are particularly useful for benchmarking machine learning models and conducting experiments on both topic and sentiment classification tasks. They cover diverse real-world applications, such as news categorization, domain-specific snippet classification, and social media sentiment analysis, making them versatile resources for research and development in computational linguistics.

Instructions: 

This collection includes multiple short text classification datasets designed for various natural language processing tasks. It contains several topic classification datasets, such as AG'News, Snippets, and TMNNews, which cover a wide range of topics and domains to evaluate the effectiveness of classification models. Additionally, the collection includes a binary sentiment classification dataset, such as Twitter, aimed at determining positive or negative sentiment in text. All datasets are provided in CSV format, with the first column representing the labels (e.g., categories or sentiments) and the second column containing the corresponding text content. These datasets are particularly useful for benchmarking machine learning models and conducting experiments on both topic and sentiment classification tasks. They cover diverse real-world applications, such as news categorization, domain-specific snippet classification, and social media sentiment analysis, making them versatile resources for research and development in computational linguistics.

Comments

A short text classification dataset

Submitted by Ye Wang on Fri, 12/27/2024 - 03:35