articleIEEE Transactions on Knowledge and Data EngineeringJul 1, 2013Closed access

Adaptation Regularization: A General Framework for Transfer Learning

Tsinghua University · Institute for Infocomm Research · +1 more institution

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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…

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5

Topics & keywords

Keywords
  • Computer science
  • Domain adaptation
  • Artificial intelligence
  • Transfer of learning
  • Machine learning
  • Classifier (UML)
  • Representer theorem
  • Reproducing kernel Hilbert space
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