articleDec 1, 2013Closed access

Transfer Feature Learning with Joint Distribution Adaptation

Tsinghua University · University of Illinois Chicago

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Abstract

Transfer learning is established as an effective technology in computer vision for leveraging rich labeled data in the source domain to build an accurate classifier for the target domain. However, most prior methods have not simultaneously reduced the difference in both the marginal distribution and conditional distribution between domains. In this paper, we put forward a novel transfer learning approach, referred to as Joint Distribution Adaptation (JDA). Specifically, JDA aims to jointly adapt both the marginal distribution and conditional distribution in a principled dimensionality reduction procedure, and construct new feature representation that is effective and robust for substantial distribution…

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2,016
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Authors

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Topics & keywords

Keywords
  • Computer science
  • Marginal distribution
  • Joint probability distribution
  • Transfer of learning
  • Artificial intelligence
  • Classifier (UML)
  • Conditional probability distribution
  • Dimensionality reduction
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