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How to Develop a Deep Learning Bag-of-Words Model for Sentiment Analysis (Text Classification) - MachineLearningMastery.com
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Applied Sciences | Free Full-Text | Learning Word Embeddings with Chi-Square Weights for Healthcare Tweet Classification
GitHub - ShereenMamdouh/irony-detection-machine-learning: it's a python code that works on 3 features (bag of words and sementic analysis and word embedding) and 4 classifers (svm , K nearest neighboor nayie bayes and
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