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  • Created over 11 years ago
  • Updated over 11 years ago

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Repository Details

TwitMiner is a Machine learning contest conducted by Computer Science and Automation department of Indian Institute of Science, Bangalore. The challenge is to predict whether a particular tweet text can be classified to a category of ‘Politics’ or ‘Sports’.

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