Skip to main content
Graph
Search
fr
|
en
Login
Search
All
Categories
Concepts
Courses
Lectures
MOOCs
People
Practice
Publications
Startups
Units
Show all results for
Home
Lecture
Recommender Systems
Graph Chatbot
Related lectures (25)
Previous
Page 1 of 3
Next
Optimization in Machine Learning
Explores optimization techniques, word embeddings, and recommendation systems in machine learning.
Recommender Systems: Part 1
Introduces recommender systems, collaborative filtering, content-based recommendation, similarity metrics, and matrix factorization.
Matrix Factorization: Optimization and Evaluation
Explores matrix factorization optimization, evaluation methods, and challenges in recommendation systems.
Recommender Systems: Matrix Factorization & Evaluation
Explores matrix factorization techniques for recommender systems, including evaluation metrics like RMSE and NDCG.
Recommender Systems
Explores the evolution and impact of recommender systems, covering information retrieval, collaborative filtering, and different recommendation algorithms.
Recommender Systems: MovieLens Dataset
Covers implementing recommender systems using the MovieLens dataset and evaluating them with RMSE and MAE metrics.
Recommender Systems and Structure Discovery
Explores recommender systems, latent factor models, and clustering algorithms for structure discovery.
Recommender Systems: Basics and Techniques
Covers collaborative filtering and content-based methods for recommender systems, addressing cold start problems and making predictions.
Recommender Systems: Personalized Recommendations for Users
Delves into challenges of content personalization, focusing on web recommendations and personalized newsletters.
Stochastic Optimization and Adaptive Gradient Methods
Explores stochastic optimization, adaptive gradient methods, recommender systems, and matrix factorization in user-item rating matrices.