Credal Models for Uncertainty and Logic Treatment
Offered By: Simons Institute via YouTube
Course Description
Overview
Explore a comprehensive lecture on credal models for uncertainty and logic treatment in artificial intelligence. Delve into the current trend of reevaluating AI advancements and their societal implications, with a focus on uncertainty treatment. Discover how credal models generalize probability theory to allow for partial probability specifications, providing a more robust approach when dealing with scarce, vague, or conflicting information. Learn about the integration of probabilities and logics in credal approaches, ranging from simple examples to sophisticated credal machine learning models. Gain insights into making AI more reliable and trustworthy through sound uncertainty and logic treatment, as presented by Cassio de Campos from TU Eindhoven at the Simons Institute's Probabilistic Circuits and Logic series.
Syllabus
Credal Models for Uncertainty and Logic Treatment
Taught by
Simons Institute
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