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NLP_using_DeepNN

Natural Language Processing using Deep Neural Network Sentiment analyses of small dataset using deep networks. This experiement is to train a deep neural network to learn sentiments and classify them.
File Sentiment_Analyses.py pro-processes the data File NN_for_sentiment_anal.py defines and trains a deep_NN_model of 3_hidden_layers and 1500_nodes each. I have dumped the trained model into a pickle (sentiment_set.pickle). You are welcome to use it to avoid processing cost.

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