Skip to content

shashist/recsys-course

Repository files navigation

Welcome to MIPT 2024 Recommender Systems course

Description

Course objective is to provide comprehensive introduction to the field of Recommender Systems.

  • first part of the course is dedicated to general RecSys approaches
  • second part briefly covers multi-armed bandits and counterfactual evaluation

To join this course contact https://t.me/alexey_grishanov.

The Syllabus

Lecture Date Description Materials Video
1 February, 13 Introduction
(A. Grishanov)
slides video
2 February, 20 Neighborhood-Based models
(A. Grishanov)
slides notebook video
3 February, 27 Matrix Factorization models
(A. Volodkevich)
slides notebook video
4 March, 5 Content-based and Hybrid systems
(A. Volodkevich)
slides video
5 March, 12 Two-level models
(A. Grishanov)
notebook video
6 March, 19 Neural recommenders
(A. Volodkevich)
slides notebook video
7 March, 26 Multi-armed bandits
(A. Grishanov)
slides video
8 April, 2 Counterfactual evaluation
(A. Grishanov)
slides video
9 April, 9 Next-Basket Recommendations
(guest lecture by O. Lashinin)
slides video

Homeworks (expected)

Homework Date Deadline Description Link
1 March, 13 March, 27 practical link
2 April, 28 May, 12 theoretical link

Grade = min(round(#points), 10)

About

Recommender Systems course for MIPT IDA 4th-year students

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published