Font Size: a A A

Robust Learning under Uncertain Test Distributions

Posted on:2014-10-23Degree:M.SType:Thesis
University:University of Alberta (Canada)Candidate:Wen, JunfengFull Text:PDF
GTID:2458390008450221Subject:Computer Science
Abstract/Summary:
Many learning situations involve learning the conditional distribution p(y|x) when the training data is drawn from the training distribution ptr( x), even though it will later be used to predict for instances drawn from a different test distribution pte( x). Most current approaches focus on learning how to reweigh the training examples, to make them resemble the test distribution. However, reweighing does not always help, because (we show that) the test error also depends on the correctness of the underlying model class. This thesis analyses this situation by viewing the problem of learning under changing distributions as a game between a learner and an adversary. We characterize when such reweighing is needed, and also provide an algorithm, robust covariate shift adjustment (RCSA), that provides relevant weights. Our empirical studies, on UCI datasets and a real-world cancer prognostic prediction dataset, show that our analysis applies, and that our RCSA works effectively.
Keywords/Search Tags:Distribution, Test
Related items