Comparison of performance evaluation of the baseline and hybrid recommendation systems using various metrics, to prove that hybrid systems perform better
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Updated
Sep 23, 2020 - Jupyter Notebook
Comparison of performance evaluation of the baseline and hybrid recommendation systems using various metrics, to prove that hybrid systems perform better
Tools for development of recommendation systems in Python.
A Movie Recommendation System using Lightfm library
Recommendation Engine for E-Grocery store
A small neural net to recommend movies to the user
Recommendation System
LightFM convenience tools.
A recommendation system that uses machine learning to recommend a movie the user would like most
Introduction to Deep Learning
A movie recommendation demo that uses the LightFM library and the movielens dataset.
Implementation of recommendation system
A repository to practice with recommendation engines.
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