An Automatic Finite-Sample Robustness Check: Can Dropping a Little Data Change Conclusions?
Paul G. Allen School via YouTube
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Watch a distinguished seminar from MIT's Tamara Broderick exploring the critical question of data robustness in statistical analysis. Learn about an innovative method to assess how removing small fractions of data can potentially change research conclusions. Broderick demonstrates how her automatic finite-sample robustness check can reveal whether influential findings might be driven by just a tiny subset of observations. The talk explains how this sensitivity is determined by signal-to-noise ratios rather than sample size or model misspecification. Through empirical examples, discover how several influential economics papers' conclusions can be altered by removing less than 1% of their data, while other analyses remain robust. This presentation offers valuable insights for researchers and practitioners concerned with the reliability and generalizability of data-driven conclusions across different populations or time periods.
Syllabus
Distinguished Seminar in Optimization & Data: Tamara Broderick (MIT)
Taught by
Paul G. Allen School