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Preprint

Domain Generalization via Invariant Feature Representation

Krikamol MuandetMax Planck Institute for Intelligent Systems, Spemannstra?e 38, 72076 Tubingen, GermanyDavid BalduzziDepartment of Computer Science, ETH Zurich, Universitatstrasse 6, 8092 Zurich, SwitzerlandSchölkopf, BernhardMax Planck Institute for Intelligent Systems, Spemannstra?e 38, 72076 Tubingen, Germany
2013en
ABI

Abstract

This paper investigates domain generalization: How to take knowledge acquired from an arbitrary number of related domains and apply it to previously unseen domains? We propose Domain-Invariant Component Analysis (DICA), a kernel-based optimization algorithm that learns an invariant transformation by minimizing the dissimilarity across domains, whilst preserving the functional relationship between input and output variables. A learning-theoretic analysis shows that reducing dissimilarity improves the expected generalization ability of classifiers on new domains, motivating the proposed algorithm. Experimental results on synthetic and real-world datasets demonstrate that DICA successfully learns invariant features and improves classifier performance in practice.

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Citations and references

Cited by 20 references