Advances in Risk-Aware Multi-Armed Bandit Problems - Lecture 3
Offered By: International Centre for Theoretical Sciences via YouTube
Course Description
Overview
Explore advances in risk-aware multi-armed bandit problems in this lecture by Vincent Tan, part of the Data Science: Probabilistic and Optimization Methods discussion meeting. Delve into cutting-edge techniques for handling uncertainty and risk in decision-making processes within the context of multi-armed bandit algorithms. Gain insights into the latest research and methodologies for balancing exploration and exploitation while considering risk factors. Learn how these advanced approaches can be applied to real-world scenarios in fields such as finance, healthcare, and online advertising. The lecture, lasting 1 hour and 19 minutes, is presented at the International Centre for Theoretical Sciences and forms part of a comprehensive program featuring leading experts in data science and probabilistic methods.
Syllabus
Advances in Risk-Aware Multi-Armed Bandit Problems (Lecture 3) by Vincent Tan
Taught by
International Centre for Theoretical Sciences
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