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    何秋妍, 邓明华. 通用域适应综述[J]. 计算机研究与发展, 2024, 61(1): 120-144. DOI: 10.7544/issn1000-1239.202220935
    引用本文: 何秋妍, 邓明华. 通用域适应综述[J]. 计算机研究与发展, 2024, 61(1): 120-144. DOI: 10.7544/issn1000-1239.202220935
    He Qiuyan, Deng Minghua. Survey of Universal Domain Adaptation[J]. Journal of Computer Research and Development, 2024, 61(1): 120-144. DOI: 10.7544/issn1000-1239.202220935
    Citation: He Qiuyan, Deng Minghua. Survey of Universal Domain Adaptation[J]. Journal of Computer Research and Development, 2024, 61(1): 120-144. DOI: 10.7544/issn1000-1239.202220935

    通用域适应综述

    Survey of Universal Domain Adaptation

    • 摘要: 域适应问题放宽了传统机器学习问题关于训练样本和测试样本同分布的假设,在域间差异存在的情况下从富有标签的源域迁移知识到缺少标签的目标域. 但现有域适应方法大多依赖于对源域和目标域标签集合的相对关系的假设,不贴合实际应用场景,因此,通用域适应问题考虑如何在缺少源域和目标域的标签集合先验信息的情况下,实现对目标域的标记. 在此过程中,通用域适应方法需要判定目标域样本是否属于源域类别,克服域间差异和潜在的类别差异,在源域和目标域共有类上完成标签的迁移. 首先从问题设置与方法策略2方面,对通用域适应方法进行梳理;然后通过实验对比了典型方法,进而分析了通用域适应问题的研究难点;随后整理了现有方法的应用情况,对与之有关的实际应用问题进行了分析;最后探讨了通用域适应问题未来研究方向.

       

      Abstract: Domain adaptation relaxes the assumption that test data follows the same distribution as training data in traditional machine learning, and transfers knowledge from label-rich source domain to label-scarce target domain when domain bias exists. However, most domain adaptation methods make assumptions about the relative relationship between the label space of source domain and target domain which limits the application of these methods in reality. Therefore, universal domain adaptation is proposed to label target data without prior information of label spaces of source domain and target domain. Generally, a universal domain adaptation model needs to solve several problems. Firstly, it is desired to judge whether a target sample belongs to classes in source domain. Then it ought to transfer knowledge of common classes shared by source domain and target domain to label target samples, as well as dealing with the domain bias and potential category shift. Due to its practicability, universal domain adaptation has gained more and more attention now. Many branches of universal domain adaptation have been proposed, and researchers are trying to apply it onto datasets different from images. In this review, we conduct an exhaustive survey of universal domain adaptation methods till now from the point of problem setting and strategies. Then we compare typical methods and analyze the difficulties in the universal domain adaptation. After that, we introduce current applications of universal domain adaptation. Meanwhile, we analyze relevant research areas briefly. Lastly, we discuss the problems of universal domain adaptation that can be studied further.

       

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