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Scoring Systems - At the Extreme of Interpretable Machine Learning - Cynthia Rudin - Duke University

Alan Turing Institute via YouTube

Overview

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Explore the critical importance of interpretable machine learning in high-stakes decision-making through this 46-minute conference talk by Professor Cynthia Rudin from Duke University. Delve into the fundamental problem of optimal scoring systems, examining their history, design, and practical applications in healthcare and criminal justice. Learn about the first practical algorithm for building optimal scoring systems from data, and understand the societal consequences of using black box models. Discover the advantages of interpretable models over black box approaches, particularly in areas like bail decisions, healthcare, and finance. Examine case studies, including the COMPAS recidivism prediction tool, and gain insights into the ethical implications of AI-driven decision-making. Engage with cutting-edge research on risk scores, recidivism prediction, and seizure probability assessment in hospitalized patients.

Syllabus

Intro
Can a typo lead to extra prison time
Blackbox vs interpretable models
Are blackbox models more accurate
History of scoring systems
Designing optimal scoring systems
Elastic net example
Validation
RiskSlim
Cutting planes
Mixed integer programs
Lattice cutting plane
Recap
Applications
Accuracy
Criminal recidivism
ProPublica
Age vs Compass
Compass depends on race
Inputting data reliably
Compass is interpretable
Summary

Taught by

Alan Turing Institute

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