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无监督域适应中的源域重构方法

Życie i twórczość malarza Aleksandra Ubelskiego (1649/1651-1718)

IEEE Transactions on Cybernetics · 2009
被引 0
ABS 3

中文导读

提出源域重构(SDR)新设置,通过混合源域和目标域样本构建可迁移的伪源域,并设计域MixUp算法,在7个基准测试上验证了其提升现有域适应算法性能的有效性。

Abstract

The aim of unsupervised domain adaptation (UDA) is to utilize knowledge from a source domain to enhance the performance of a given target domain. Due to the lack of accessibility to the target domain's labels, UDA's efficacy is highly reliant on the source domain's quality. However, it is often impractical and expensive to obtain an appropriate transferable source domain. To address this issue, we propose a novel UDA setting, source domain reconstruction (SDR), which seeks to construct a new transferable source domain utilizing labeled source samples and unlabeled target samples. SDR has a significant advantage over the conventional method as it is much less expensive to construct a suitable pseudo-source domain rather than collecting an actual transferable source domain in real-world scenarios. To test the practice of SDR, we investigate SDR theoretically. We propose an easily implementable algorithm, the domain MixUp (DMU), which is motivated by the MixUp strategy, to solve the SDR problem. The algorithm can be used to design a UDA framework to significantly enhance the performance of several existing UDA algorithms. Results from extensive experiments conducted on seven benchmarks (66 UDA tasks) indicate that the reconstructed source domain has stronger transferability than the original source domain.

计算机科学机器学习域适应