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Postdoc Seminars

Extended Fiducial Inference: Likelihood-Free Inference for Modern Machine Learning

  • 2026-03-11 (Wed.), 14:00 PM
  • Auditorium, B1F, Institute of Statistical Science;The tea reception will be held at 13:40.
  • Online live streaming through Microsoft Teams will be available.
  • Dr. Frank Shih
  • Sloan Kettering Cancer Center , U.S.A.

Abstract

Modern statistics often contrasts frequentist and Bayesian inference, where uncertainty is quantified through sampling distributions or posterior distributions—typically under an explicit likelihood. Extended fiducial inference (EFI) offers a different and ML-friendly perspective: it constructs parameter uncertainty directly from the optimization objective, without requiring a tractable likelihood.

In this talk, I will introduce the EFI framework and show how it turns common loss functions into practical “inferential engines,” producing uncertainty quantification that is easy to deploy in modern pipelines. I will highlight applications in high-dimensional regression and logistic regression, and close with why EFI is timely for the future of statistics in machine learning—enabling uncertainty quantification for deep models such as CNNs, LSTMs, and physics-informed neural networks, and pointing toward scalable uncertainty-aware learning in large architectures.

Please click here for participating the talk online.

Update:2026-02-25 09:56
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