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3 months ago

Entropy Minimization vs. Diversity Maximization for Domain Adaptation

Xiaofu Wu Suofei hang Quan Zhou Zhen Yang Chunming Zhao Longin Jan Latecki

Entropy Minimization vs. Diversity Maximization for Domain Adaptation

Abstract

Entropy minimization has been widely used in unsupervised domain adaptation (UDA). However, existing works reveal that entropy minimization only may result into collapsed trivial solutions. In this paper, we propose to avoid trivial solutions by further introducing diversity maximization. In order to achieve the possible minimum target risk for UDA, we show that diversity maximization should be elaborately balanced with entropy minimization, the degree of which can be finely controlled with the use of deep embedded validation in an unsupervised manner. The proposed minimal-entropy diversity maximization (MEDM) can be directly implemented by stochastic gradient descent without use of adversarial learning. Empirical evidence demonstrates that MEDM outperforms the state-of-the-art methods on four popular domain adaptation datasets.

Code Repositories

AI-NERC-NUPT/MEDM
Official
pytorch

Benchmarks

BenchmarkMethodologyMetrics
domain-adaptation-on-imageclef-daMEDM
Accuracy: 88.9
domain-adaptation-on-office-31MEDM
Average Accuracy: 89.2
domain-adaptation-on-office-homeMEDM
Accuracy: 69.5

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Entropy Minimization vs. Diversity Maximization for Domain Adaptation | Papers | HyperAI