Abstract
In this never-ending social media era it is estimated that over 5 billion people use smartphones. Out of these, there are over 1.5 billion active users in the world. In which we all are a major part and before opening our messages we all are curious about what message we have received. No doubt, we all always hope for a good message to be received. So Sentiment analysis on social media data has been seen by many as an effective tool to monitor user preferences and inclination. Finally, we propose a scalable machine learning model to analyze the polarity of a communicative text using Naive Bayes’ Bernoulli classifier. This paper works on only two polarities that is whether the sentence is positive or negative. Bernoulli classifier is used in this paper because it is best suited for binary inputs which in turn enhances the accuracy of up to 97%.
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Prabu, M., Aithani, M. S., Deb, N., & Joshi, P. (2019). Communication sentiment analyzer using machine learning with naive bayes bernoullinb. International Journal of Engineering and Advanced Technology, 9(1), 5976–5979. https://doi.org/10.35940/ijeat.A1610.109119
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