skip to main content
US FlagAn official website of the United States government
dot gov icon
Official websites use .gov
A .gov website belongs to an official government organization in the United States.
https lock icon
Secure .gov websites use HTTPS
A lock ( lock ) or https:// means you've safely connected to the .gov website. Share sensitive information only on official, secure websites.


Search for: All records

Creators/Authors contains: "Klivans, AR"

Note: When clicking on a Digital Object Identifier (DOI) number, you will be taken to an external site maintained by the publisher. Some full text articles may not yet be available without a charge during the embargo (administrative interval).
What is a DOI Number?

Some links on this page may take you to non-federal websites. Their policies may differ from this site.

  1. Recent work of Klivans, Stavropoulos, and Vasilyan initiated the study of testable learning with distribution shift (TDS learning), where a learner is given labeled samples from training distribution D, unlabeled samples from test distribution D′, and the goal is to output a classifier with low error on D′ whenever the training samples pass a corresponding test. Their model deviates from all prior work in that no assumptions are made on D′. Instead, the test must accept (with high probability) when the marginals of the training and test distributions are equal. Here we focus on the fundamental case of intersections of halfspaces with respect to Gaussian training distributions and prove a variety of new upper bounds including a 2(k/ϵ)O(1)poly(d)-time algorithm for TDS learning intersections of k homogeneous halfspaces to accuracy ϵ (prior work achieved d(k/ϵ)O(1)). We work under the mild assumption that the Gaussian training distribution contains at least an ϵ fraction of both positive and negative examples (ϵ-balanced). We also prove the first set of SQ lower-bounds for any TDS learning problem and show (1) the ϵ-balanced assumption is necessary for poly(d,1/ϵ)-time TDS learning for a single halfspace and (2) a dΩ~(log1/ϵ) lower bound for the intersection of two general halfspaces, even with the ϵ-balanced assumption. Our techniques significantly expand the toolkit for TDS learning. We use dimension reduction and coverings to give efficient algorithms for computing a localized version of discrepancy distance, a key metric from the domain adaptation literature. 
    more » « less