Causal Matrix Completion - Applications to Offline
International Centre for Theoretical Sciences via YouTube
Overview
Explore a comprehensive lecture on Causal Matrix Completion and its applications to offline scenarios, presented by Anish Agarwal from Amazon, India. Delve into advanced data science concepts as part of the "Data Science: Probabilistic and Optimization Methods" discussion meeting organized by the International Centre for Theoretical Sciences. Gain insights into cutting-edge techniques in data processing, analysis, and algorithmic approaches that are driving the current data science revolution. Learn how traditional model-based methods are being combined with data-driven approaches to achieve optimal results across various scientific disciplines. Discover the intersection of high-end mathematics, heuristics, optimization, linear algebra, and probability and statistics that form the backbone of modern data science. Benefit from exposure to leading themes in the field and explore new directions in probabilistic and optimization techniques.
Syllabus
Causal Matrix Completion: Applications to Offline.... by Anish Agarwal (Amazon, India)
Taught by
International Centre for Theoretical Sciences