movielens-data-analysis
Here are 24 public repositories matching this topic...
Movie Recommender based on the MovieLens Dataset (ml-100k) using item-item collaborative filtering.
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Oct 16, 2017 - Jupyter Notebook
Spark MLLIB: Collaborative Filtering Movie Recommendation System
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Nov 11, 2017 - Scala
A Feature Preference based CF Experiment on MovieLens 100K dataset
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Jan 3, 2018 - Jupyter Notebook
Movie recommendation system based on Collaborative filtering using Apache Spark
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Mar 31, 2018 - Python
Created visualizations of the MovieLens data set using matrix factorization http://www.yisongyue.com/courses/cs155/2018_winter/assignments/project2.pdf
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Apr 13, 2018 - Python
Analysis of MovieLens Dataset in Python
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Jul 17, 2018 - Jupyter Notebook
Building a movie recommender system with factorization machines on Amazon SageMaker.
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Sep 3, 2018 - Jupyter Notebook
Contains my custom implementation of various machine learning models and analysis.
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Apr 22, 2019 - Jupyter Notebook
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Apr 30, 2019 - Jupyter Notebook
Project to determine the ratings for a movie using each of the Spark & Hadoop Eco-system.
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Jun 7, 2019 - Scala
Data analysis on Big Data. Used various databases from 1M to 100M including Movie Lens dataset to perform analysis. Covers basics and advance map reduce using Hadoop.
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Mar 8, 2020
Data analysis on Big Data. Used various databases from 1M to 100M including Movie Lens dataset to perform analysis. Covers basics and advance map reduce using MongoDB.
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Apr 20, 2020
Implementation of Spotify's Generalist-Specialist score on the MovieLens dataset.
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Jun 1, 2020 - Jupyter Notebook
This repository contains analysis of IMDB data from multiple sources and analysis of movies/cast/box office revenues, movie brands and franchises
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Jun 21, 2020 - TSQL
A recommendation algorithm capable of accurately predicting how a user will rate a movie they have not yet viewed based on their historical preferences. The models and EDA are based on the 1M MOVIELENS dataset
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Aug 11, 2020 - Jupyter Notebook
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Oct 14, 2020 - Python
Data analysis and movie recommendation of OpenMovie dataset by using the shell, Python, Cosine Similarity algorithm, Apache PySpark, and Apache Hadoop.
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Dec 23, 2020 - Python
MovieLens Dataset analysis using Hadoop and Pyspark
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Mar 31, 2021 - Jupyter Notebook
Data cleaning, pre-processing, and Analytics on a million movies using Spark and Scala.
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May 19, 2021 - Scala
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