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Main Authors: Bhattacharjee, Robi, Rittler, Nick, Chaudhuri, Kamalika
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2405.19156
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author Bhattacharjee, Robi
Rittler, Nick
Chaudhuri, Kamalika
author_facet Bhattacharjee, Robi
Rittler, Nick
Chaudhuri, Kamalika
contents Many machine learning models appear to deploy effortlessly under distribution shift, and perform well on a target distribution that is considerably different from the training distribution. Yet, learning theory of distribution shift bounds performance on the target distribution as a function of the discrepancy between the source and target, rarely guaranteeing high target accuracy. Motivated by this gap, this work takes a closer look at the theory of distribution shift for a classifier from a source to a target distribution. Instead of relying on the discrepancy, we adopt an Invariant-Risk-Minimization (IRM)-like assumption connecting the distributions, and characterize conditions under which data from a source distribution is sufficient for accurate classification of the target. When these conditions are not met, we show when only unlabeled data from the target is sufficient, and when labeled target data is needed. In all cases, we provide rigorous theoretical guarantees in the large sample regime.
format Preprint
id arxiv_https___arxiv_org_abs_2405_19156
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Beyond Discrepancy: A Closer Look at the Theory of Distribution Shift
Bhattacharjee, Robi
Rittler, Nick
Chaudhuri, Kamalika
Machine Learning
Many machine learning models appear to deploy effortlessly under distribution shift, and perform well on a target distribution that is considerably different from the training distribution. Yet, learning theory of distribution shift bounds performance on the target distribution as a function of the discrepancy between the source and target, rarely guaranteeing high target accuracy. Motivated by this gap, this work takes a closer look at the theory of distribution shift for a classifier from a source to a target distribution. Instead of relying on the discrepancy, we adopt an Invariant-Risk-Minimization (IRM)-like assumption connecting the distributions, and characterize conditions under which data from a source distribution is sufficient for accurate classification of the target. When these conditions are not met, we show when only unlabeled data from the target is sufficient, and when labeled target data is needed. In all cases, we provide rigorous theoretical guarantees in the large sample regime.
title Beyond Discrepancy: A Closer Look at the Theory of Distribution Shift
topic Machine Learning
url https://arxiv.org/abs/2405.19156