A Gentle Introduction to Recommendation as Counterfactual Policy Learning
Offered By: Association for Computing Machinery (ACM) via YouTube
Course Description
Overview
Explore a comprehensive tutorial on recommendation systems framed as counterfactual policy learning. Delve into the conceptual frameworks behind state-of-the-art recommender systems, examining their underlying assumptions, methods, and limitations. Discover a new approach that views recommendation as a counterfactual policy learning problem. Learn about current approaches for building real-world recommender systems, including recommendation as optimal auto-completion of user behavior and as reward modeling. Examine theoretical guarantees addressing shortcomings of previous frameworks, and test associated algorithms against classical methods using RecoGym, an open-source recommendation simulation environment. Gain insights from industry experts on deep learning-based recommendation systems, causal inference in recommendation, and offline evaluation techniques.
Syllabus
A Gentle Introduction to Recommendation as Counterfactual Policy Learning
Taught by
ACM SIGCHI
Related Courses
Information TheoryThe Chinese University of Hong Kong via Coursera Intro to Computer Science
University of Virginia via Udacity Analytic Combinatorics, Part I
Princeton University via Coursera Algorithms, Part I
Princeton University via Coursera Divide and Conquer, Sorting and Searching, and Randomized Algorithms
Stanford University via Coursera