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    Apache License 2.0
  • Created almost 5 years ago
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Repository Details

The objective of this project is to predict the sentiment of the drug Users, according to their reviews and various other features like the condition they are suffering from, the rating of the drug used, Date of the usage, and others. Exploratory Data Analysis is done to get the insights and Feature engineering is done. Machine learning models are developed for the prediction of the sentiment and Feature importance is plotted.

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