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  • Language
    R
  • Created almost 7 years ago
  • Updated almost 7 years ago

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Repository Details

Using candidate data from different online data sources (My Neta/ECI), process and cleaned the data, identified variables of interest and built RF model to predict exit poll results of Loksabha election 2014 (Accuracy:84%, TPR: 60%)

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