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Movie Recommendation System

AIM

When given a movie as an input, the Machine Learning Algorithm would predict top 5 movies similar to the given input movie by the user.

STEPS FOLLOWED

  1. Import numpy and pandas

  2. This is a content based movie recommendation system, so we will take just important columns from dataset like, genres, id, keyword, title, etc.

  3. A dictionary will store all the required columns and data cleansing will also take place- null data + duplicate check

  4. Text Vectorization - It considers movie as a vector and identifies top 5 closest vectors to the given movie.

  5. The stemmer will help in merging same words together.

  6. The recommend function at the end will help in predicting 5 most similar movies.

RESULTS

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