Explore a thought-provoking lecture on leveraging machine learning for scientific discovery and decision-making while addressing prediction errors. Delve into the innovative framework of prediction-powered inference, which enables valid statistical analysis by combining gold-standard data with machine learning predictions without assumptions about the system. Discover how this approach enhances data efficiency in fields like proteomics, genomics, and astronomy. Gain insights into recent developments in applying these concepts to make reliable machine learning-guided decisions in biological sequence design and other domains. Learn how to embrace and work with prediction errors to advance scientific research and decision-making processes.
Overview
Syllabus
Error Embraced: Making Trustworthy Scientific Decisions with Imperfect Predictions
Taught by
Simons Institute