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ADAPTIVE TRANSFER LEARNING

Accepted version
Peer-reviewed

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Authors

Reeve, Henry WJ 
Cannings, Timothy I 
Samworth, Richard J 

Abstract

In transfer learning, we wish to make inference about a target population when we have access to data both from the distribution itself, and from a different but related source distribution. We introduce a flexible framework for transfer learning in the context of binary classification, allowing for covariate-dependent relationships between the source and target distributions that are not required to preserve the Bayes decision boundary. Our main contributions are to derive the minimax optimal rates of convergence (up to poly-logarithmic factors) in this problem, and show that the optimal rate can be achieved by an algorithm that adapts to key aspects of the unknown transfer relationship, as well as the smoothness and tail parameters of our distributional classes. This optimal rate turns out to have several regimes, depending on the interplay between the relative sample sizes and the strength of the transfer relationship, and our algorithm achieves optimality by careful, decision tree-based calibration of local nearest-neighbour procedures.

Description

Keywords

Transfer learning, classification, decision trees, nearest neighbours, nonparametric, minimax

Journal Title

ANNALS OF STATISTICS

Conference Name

Journal ISSN

0090-5364

Volume Title

Publisher

Institute of Mathematical Statistics

Rights

All rights reserved
Sponsorship
Engineering and Physical Sciences Research Council (EP/N031938/1)
Engineering and Physical Sciences Research Council (EP/P031447/1)