Classification of Optional Practical Training (OPT) comments using a Naive Bayes classifier
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چکیده
This project aims to classify the optional practical training comments using a naive Bayes classifier. We demonstrate the effectiveness of the naive Bayes approach and further enhance its performance using a simplified form of an expectation maximisation algorithm. We explore how sentiments change over time, and also provide preliminary results that help in understanding how sentiments vary with ethnicity.
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تاریخ انتشار 2015