61 Anytime-Valid Generalized Universal Inference on Risk Minimizers

Ryan Martin Co-Author
 
Jonathan Williams Co-Author
North Carolina State University
 
Neil Dey First Author
 
Neil Dey Presenting Author
 
Wednesday, Aug 7: 10:30 AM - 12:20 PM
3299 
Contributed Posters 
Oregon Convention Center 
A common goal in statistics and machine learning is estimation of unknowns. Point estimates alone are of little value without an accompanying measure of uncertainty, but traditional uncertainty quantification methods, such as confidence sets and p-values, often require strong distributional or structural assumptions that may not be justified in modern problems. The present paper considers a very common case in machine learning, where the quantity of interest is the minimizer of a given risk (expected loss) function. For such cases, we propose a generalized universal procedure for inference on risk minimizers that features a finite-sample, frequentist validity property under mild distributional assumptions. One version of the proposed procedure is shown to be anytime-valid in the sense that it maintains validity properties regardless of the stopping rule used for the data collection process. We show how this anytime-validity property offers protection against certain factors contributing to the replication crisis in science.

Keywords

e-process

e-value

empirical risk minimization

Gibbs posterior

learning rate

machine learning 

Abstracts


Main Sponsor

Uncertainty Quantification in Complex Systems Interest Group