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sentiment-analysis-on-tweeter

In this notebook I did sentiment analysis on tweeter dataset.

I designed 4 model for this purpose:

  • Bi-directional LSTM
  • Convolutional Nural Network
  • Logistic Regression
  • Baysian Classifier

For Deep Learning models I used Word Embedding Keras layer for feature extraction and for classic models I used CountVectorize and TF-IDF.

At the end I concluded that Bi-LSTM layer hast better performance for this dataset.