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Netflix Movie recommendation system
Exploratory Data Analysis:Preliminary data analysis.
Exploratory Data Analysis:Preliminary data analysis.
Instructor:
Applied AI Course
Duration:
15 mins
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Exploratory Data Analysis:Temporal Train-Test split.
Exploratory Data Analysis:Sparse matrix representation
Netflix Movie Recommendation System
1.1
Business/Real world problem:Problem definition
6 min
1.2
Objectives and constraints
7 min
1.3
Mapping to an ML problem:Data overview
4 min
1.4
Mapping to an ML problem:ML problem formulation
5 min
1.5
Exploratory Data Analysis:Data preprocessing
7 min
1.6
Exploratory Data Analysis:Temporal Train-Test split.
6 min
1.7
Exploratory Data Analysis:Preliminary data analysis.
15 min
1.8
Exploratory Data Analysis:Sparse matrix representation
8 min
1.9
Exploratory Data Analysis:Average ratings for various slices
8 min
1.10
Exploratory Data Analysis:Cold start problem
5 min
1.11
Computing Similarity matrices:User-User similarity matrix
20 min
1.12
Computing Similarity matrices:Movie-Movie similarity
6 min
1.13
Computing Similarity matrices:Does movie-movie similarity work?
6 min
1.14
ML Models:Surprise library
6 min
1.15
Overview of the modelling strategy.
8 min
1.16
Data Sampling.
5 min
1.17
Google drive with intermediate files
2 min
1.18
Featurizations for regression.
11 min
1.19
Data transformation for Surprise.
2 min
1.20
Xgboost with 13 features
6 min
1.21
Surprise Baseline model.
9 min
1.22
Xgboost + 13 features +Surprise baseline model
4 min
1.23
Surprise KNN predictors
15 min
1.24
Matrix Factorization models using Surprise
5 min
1.25
SVD ++ with implicit feedback
11 min
1.26
Final models with all features and predictors.
4 min
1.27
Comparison between various models.
4 min
1.28
Assignments
4 min
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