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NLP Project

Jupyter notebook contains solutions of the following below task:

Given Reviews find positive or negative

  • Developed a rule-based classifier with logistic regression, achieving 70.17% accuracy, and implemented a Bag-of-Words model that reached 85.02% accuracy, identifying the top five most positive and negative words.

Learn Dense word embedding and test its semantic and analogy.

  • Trained a SkipGram model from scratch to learn word embeddings using the WikiText2 dataset. Evaluated the quality of the embeddings using an analogies dataset, achieving a precision-at-5 score of 40%