Coupling Adversarial Learning with Selective Voting Strategy for Distribution Alignment in Partial Domain Adaptation

Authors

  • Sandipan Choudhuri Arizona State University, USA
  • Hemanth Venkateswara Arizona State University, USA
  • Arunabha Sen Arizona State University, USA

DOI:

https://doi.org/10.47852/bonviewJCCE2202324

Keywords:

partial domain adaptation, domain adaptation, adversarial learning, class-distribution alignment

Abstract

In contrast to a standard closed-set domain adaptation task, partial domain adaptation setup caters to a realistic scenario by relaxing the identical label set assumption. The fact of source label set subsuming the target label set, however, introduces few additional obstacles as training on private source category samples thwart relevant knowledge transfer and mislead the classification process. To mitigate these issues, we devise a mechanism for strategic selection of highly confident target samples essential for the estimation of class-importance weights. Furthermore, we capture class-discriminative and domain-invariant features by coupling the process of achieving compact and distinct class distributions with an adversarial objective. Experimental findings over numerous cross-domain classification tasks demonstrate the potential of the proposed technique to deliver superior and comparable accuracy over existing methods.

 

Received: 13 July 2022 | Revised: 18 July 2022 | Accepted: 24 August 2022

 

Conflicts of Interest

The authors declare that they have no conflicts of interest to this work.

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Published

2022-10-08

How to Cite

Choudhuri, S., Venkateswara, H., & Sen, A. (2022). Coupling Adversarial Learning with Selective Voting Strategy for Distribution Alignment in Partial Domain Adaptation. Journal of Computational and Cognitive Engineering, 1(4), 181–186. https://doi.org/10.47852/bonviewJCCE2202324

Issue

Section

Research Articles