Abstract

Domain transfer learning, which learns a target classifier using labeled data from a different distribution, has shown promising value in knowledge discovery yet still been a challenging problem. Most previous works designed adaptive classifiers by exploring two learning strategies independently: distribution adaptation and label propagation. In this paper, we propose a novel transfer learning framework, referred to as Adaptation Regularization based Transfer Learning (ARTL), to model them in a unified way based on the structural risk minimization principle and the regularization theory. Specifically, ARTL learns the adaptive classifier by simultaneously optimizing the structural risk functional, the joint distribution matching between domains, and the manifold consistency underlying marginal distribution. Based on the framework, we propose two novel methods using Regularized Least Squares (RLS) and Support Vector Machines (SVMs), respectively, and use the Representer theorem in reproducing kernel Hilbert space to derive corresponding solutions. Comprehensive experiments verify that ARTL can significantly outperform state-of-the-art learning methods on several public text and image datasets.

Keywords

Computer scienceDomain adaptationArtificial intelligenceTransfer of learningMachine learningClassifier (UML)Representer theoremReproducing kernel Hilbert spaceSemi-supervised learningSupport vector machineRegularization (linguistics)Pattern recognition (psychology)Empirical risk minimizationJoint probability distributionManifold alignmentHilbert spaceKernel methodNonlinear dimensionality reductionMathematicsKernel embedding of distributionsDimensionality reduction

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Publication Info

Year
2013
Type
article
Volume
26
Issue
5
Pages
1076-1089
Citations
628
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Closed

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Cite This

Mingsheng Long, Jianmin Wang, Guiguang Ding et al. (2013). Adaptation Regularization: A General Framework for Transfer Learning. IEEE Transactions on Knowledge and Data Engineering , 26 (5) , 1076-1089. https://doi.org/10.1109/tkde.2013.111

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DOI
10.1109/tkde.2013.111