Have any question ?
+91 8106-920-029
+91 6301-939-583
team@appliedaicourse.com
Register
Login
COURSES
Applied Machine Learning Course
Diploma in AI and ML
GATE CS Blended Course
Interview Preparation Course
AI Workshop
AI Case Studies
Courses
Applied Machine Learning Course
Workshop
Case Studies
Job Guarantee
Job Guarantee Terms & Conditions
Incubation Center
Student Blogs
Live Sessions
Success Stories
For Business
Upskill
Hire From Us
Contact Us
Home
Courses
Applied Machine Learning Online Course
Text based product similarity :Converting text to an n-D vector: bag of words
Text based product similarity :Converting text to an n-D vector: bag of words
Instructor:
Applied AI Course
Duration:
14 mins
Full Screen
Close
This content is restricted. Please
Login
Prev
Next
Stemming
Code for bag of words based product similarity
Unsupervised learning/Clustering
1.1
What is Clustering?
10 min
1.2
Unsupervised learning
4 min
1.3
Applications
16 min
1.4
Metrics for Clustering
19 min
1.5
K-Means: Geometric intuition, Centroids
8 min
1.6
K-Means: Mathematical formulation: Objective function
11 min
1.7
K-Means Algorithm.
11 min
1.8
How to initialize: K-Means++
25 min
1.9
Failure cases/Limitations
11 min
1.10
K-Medoids
19 min
1.11
Determining the right K
5 min
1.12
Code Samples
7 min
1.13
Time and space complexity
4 min
Hierarchical clustering Technique
2.1
Agglomerative & Divisive, Dendrograms
14 min
2.2
Agglomerative Clustering
9 min
2.3
Proximity methods: Advantages and Limitations.
24 min
2.4
Time and Space Complexity
4 min
2.5
Limitations of Hierarchical Clustering
5 min
2.6
Code sample
3 min
DBSCAN (Density based clustering) Technique
3.1
Density based clustering
5 min
3.2
MinPts and Eps: Density
6 min
3.3
Core, Border and Noise points
7 min
3.4
Density edge and Density connected points.
6 min
3.5
DBSCAN Algorithm
11 min
3.6
Hyper Parameters: MinPts and EpsA
10 min
3.7
Advantages and Limitations of DBSCAN
9 min
3.8
Time and Space Complexity
3 min
3.9
Code samples.
3 min
3.10
Revision Questions
30 min
Recommender Systems and Matrix Factorization
4.1
Problem formulation: Movie reviews
23 min
4.2
Content based vs Collaborative Filtering
11 min
4.3
Similarity based Algorithms
16 min
4.4
Matrix Factorization: PCA, SVD
23 min
4.5
Matrix Factorization: NMF
3 min
4.6
Matrix Factorization for Collaborative filtering
23 min
4.7
Matrix Factorization for feature engineering
9 min
4.8
Clustering as MF
21 min
4.9
Hyperparameter tuning
10 min
4.10
Matrix Factorization for recommender systems: Netflix Prize Solution
31 min
4.11
Cold Start problem
6 min
4.12
Word vectors as MF
20 min
4.13
Eigen-Faces
15 min
4.14
Code example.
11 min
4.15
Revision Questions
30 min
Interview Questions on Recommender Systems and Matrix Factorization.
5.1
Questions & Answers
30 min
Case Study 8: Amazon fashion discovery engine(Content Based recommendation)
6.1
Problem Statement: Recommend similar apparel products in e-commerce using product descriptions and Images
12 min
6.2
Plan of action
7 min
6.3
Amazon product advertising API
4 min
6.4
Data folders and paths
6 min
6.5
Overview of the data and Terminology
12 min
6.6
Data cleaning and understanding:Missing data in various features
22 min
6.7
Understand duplicate rows
9 min
6.8
Remove duplicates : Part 1
12 min
6.9
Remove duplicates: Part 2
15 min
6.10
Text Pre-Processing: Tokenization and Stop-word removal
10 min
6.11
Stemming
4 min
6.12
Text based product similarity :Converting text to an n-D vector: bag of words
14 min
6.13
Code for bag of words based product similarity
26 min
6.14
TF-IDF: featurizing text based on word-importance
17 min
6.15
Code for TF-IDF based product similarity
10 min
6.16
Code for IDF based product similarity
9 min
6.17
Text Semantics based product similarity: Word2Vec(featurizing text based on semantic similarity)
19 min
6.18
Code for Average Word2Vec product similarity
15 min
6.19
TF-IDF weighted Word2Vec
9 min
6.20
Code for IDF weighted Word2Vec product similarity
6 min
6.21
Weighted similarity using brand and color
9 min
6.22
Code for weighted similarity
7 min
6.23
Building a real world solution
5 min
6.24
Deep learning based visual product similarity:ConvNets: How to featurize an image: edges, shapes, parts
11 min
6.25
Using Keras + Tensorflow to extract features
8 min
6.26
Visual similarity based product similarity
6 min
6.27
Measuring goodness of our solution :A/B testing
7 min
6.28
Assignment-24: Apparel Recommendation
6 min
Case Study 9:Netflix Movie Recommendation System (Collaborative based recommendation)
7.1
Business/Real world problem:Problem definition
6 min
7.2
Objectives and constraints
7 min
7.3
Mapping to an ML problem:Data overview.
4 min
7.4
Mapping to an ML problem:ML problem formulation
5 min
7.5
Exploratory Data Analysis:Data preprocessing
7 min
7.6
Exploratory Data Analysis:Temporal Train-Test split.
6 min
7.7
Exploratory Data Analysis:Preliminary data analysis.
15 min
7.8
Exploratory Data Analysis:Sparse matrix representation
8 min
7.9
Exploratory Data Analysis:Average ratings for various slices
7 min
7.10
Exploratory Data Analysis:Cold start problem
5 min
7.11
Computing Similarity matrices:User-User similarity matrix
20 min
7.12
Computing Similarity matrices:Movie-Movie similarity
6 min
7.13
Computing Similarity matrices:Does movie-movie similarity work?
6 min
7.14
ML Models:Surprise library
6 min
7.15
Overview of the modelling strategy.
8 min
7.16
Data Sampling.
5 min
7.17
Google drive with intermediate files
2 min
7.18
Featurizations for regression.
11 min
7.19
Data transformation for Surprise.
2 min
7.20
Xgboost with 13 features
6 min
7.21
Surprise Baseline model.
9 min
7.22
Xgboost + 13 features +Surprise baseline model
4 min
7.23
Surprise KNN predictors
15 min
7.24
Matrix Factorization models using Surprise
5 min
7.25
SVD ++ with implicit feedback
11 min
7.26
Final models with all features and predictors.
4 min
7.27
Comparison between various models.
4 min
7.28
Assignment-18: Netflix prize
5 min
High Level + End-End Design of a Music Recommendation system
8.1
High Level + End-End Design of a Music Recommendation system - I
8.2
High Level + End-End Design of a Music Recommendation system - II
Module 7: Live Sessions
9.1
Building a simple Youtube recommendation using basic Math
9.2
Interview Questions on Clustering and Matrix Factorization
9.3
Live Session (22nd May 2022): Interview questions on Clustering
9.4
Live Session (29th May 2022): Interview Questions on Recommender Systems
9.5
Live Session(12th June 2022): Scenario based Interview Questions on RecSys
1 min
9.6
Live Session(21st August 2022): Design a Youtube Shorts/Reels/Tiktok feed recommender system
1 min
9.7
Live Session(21st August 2022): Design a Youtube Shorts/Reels/Tiktok feed recommender system
1 min
Close