Transfer Learning with Dynamic Distribution Adaptation

Author:

Wang Jindong1ORCID,Chen Yiqiang2,Feng Wenjie2,Yu Han3,Huang Meiyu4ORCID,Yang Qiang5

Affiliation:

1. Microsoft Research Asia, Beijing, China

2. Institute of Computing Technology, Chinese Academy of Sciences, Beijing, China

3. School of Computer Science and Engineering, Nanyang Technological University, Singapore

4. Qian Xuesen Laboratory of Space Technology, China Academy of Space Technology, Beijing, China

5. Department of Computer Science and Engineering, Hong Kong University of Science and Technology, Kowloon, Hong Kong

Abstract

Transfer learning aims to learn robust classifiers for the target domain by leveraging knowledge from a source domain. Since the source and the target domains are usually from different distributions, existing methods mainly focus on adapting the cross-domain marginal or conditional distributions. However, in real applications, the marginal and conditional distributions usually have different contributions to the domain discrepancy. Existing methods fail to quantitatively evaluate the different importance of these two distributions, which will result in unsatisfactory transfer performance. In this article, we propose a novel concept called Dynamic Distribution Adaptation (DDA), which is capable of quantitatively evaluating the relative importance of each distribution. DDA can be easily incorporated into the framework of structural risk minimization to solve transfer learning problems. On the basis of DDA, we propose two novel learning algorithms: (1) Manifold Dynamic Distribution Adaptation (MDDA) for traditional transfer learning, and (2) Dynamic Distribution Adaptation Network (DDAN) for deep transfer learning. Extensive experiments demonstrate that MDDA and DDAN significantly improve the transfer learning performance and set up a strong baseline over the latest deep and adversarial methods on digits recognition, sentiment analysis, and image classification. More importantly, it is shown that marginal and conditional distributions have different contributions to the domain divergence, and our DDA is able to provide good quantitative evaluation of their relative importance, which leads to better performance. We believe this observation can be helpful for future research in transfer learning.

Funder

Beijing Municipal Science 8 Technology Commission

Hong Kong CERG projects

Nanyang Technological University

Nanyang Assistant Professorship

National Key R 8 D Program of China

Publisher

Association for Computing Machinery (ACM)

Subject

Artificial Intelligence,Theoretical Computer Science

Reference78 articles.

1. Unsupervised Domain Adaptation by Domain Invariant Projection

2. Domain Adaptation on the Statistical Manifold

3. Shai Ben-David John Blitzer Koby Crammer and Fernando Pereira. 2007. Analysis of representations for domain adaptation. In Advances in Neural Information Processing Systems. 137--144. Shai Ben-David John Blitzer Koby Crammer and Fernando Pereira. 2007. Analysis of representations for domain adaptation. In Advances in Neural Information Processing Systems. 137--144.

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