Bayesian Networks for Causal Reasoning by Tavpritesh Sethi
Offered By: International Centre for Theoretical Sciences via YouTube
Course Description
Overview
Explore advanced concepts in Bayesian Networks for causal reasoning in this fourth lecture of the series. Delve into the application of Bayesian methods in healthcare and disease modeling as part of the "Machine Learning for Health and Disease" program. Learn how to leverage these powerful statistical tools to analyze complex medical data, predict patient outcomes, and infer causal relationships in clinical settings. Gain insights from expert Tavpritesh Sethi on integrating Bayesian Networks with machine learning techniques to address real-world health challenges. Suitable for PhD students in STEM fields, medical students, postdoctoral fellows, faculty, and professionals interested in applying advanced statistical methods to improve healthcare decision-making and research.
Syllabus
Bayesian Networks for Causal Reasoning IV by Tavpritesh Sethi
Taught by
International Centre for Theoretical Sciences
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