Bi-Classifier Determinacy Maximization for Unsupervised Domain Adaptation
Shuang Li, Fangrui Lv, Binhui Xie, Chi Harold Liu, Jian Liang, Chen, Qin

TL;DR
This paper introduces BCDM, a novel method for unsupervised domain adaptation that enhances feature discriminability by maximizing classifier determinacy, leading to improved transfer performance.
Contribution
It proposes a new classifier determinacy disparity metric and a theoretical framework for better domain adaptation with discriminative features.
Findings
BCDM outperforms existing methods on benchmark datasets.
The CDD metric effectively measures classifier discrepancy.
Theoretical guarantees support BCDM's generalization ability.
Abstract
Unsupervised domain adaptation challenges the problem of transferring knowledge from a well-labelled source domain to an unlabelled target domain. Recently,adversarial learning with bi-classifier has been proven effective in pushing cross-domain distributions close. Prior approaches typically leverage the disagreement between bi-classifier to learn transferable representations, however, they often neglect the classifier determinacy in the target domain, which could result in a lack of feature discriminability. In this paper, we present a simple yet effective method, namely Bi-Classifier Determinacy Maximization(BCDM), to tackle this problem. Motivated by the observation that target samples cannot always be separated distinctly by the decision boundary, here in the proposed BCDM, we design a novel classifier determinacy disparity (CDD) metric, which formulates classifier discrepancy as…
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TopicsDomain Adaptation and Few-Shot Learning · COVID-19 diagnosis using AI · Viral Infections and Outbreaks Research
