Chen Yuqing, Shen Zhencai, Li Daoliang, Zhong Ping, Chen Yingyi
IEEE Trans Neural Netw Learn Syst. 2025 Mar;36(3):5006-5019. doi: 10.1109/TNNLS.2024.3372004. Epub 2025 Feb 28.
Heterogeneous domain adaptation (HDA) aims to address the transfer learning problems where the source domain and target domain are represented by heterogeneous features. The existing HDA methods based on matrix factorization have been proven to learn transferable features effectively. However, these methods only preserve the original neighbor structure of samples in each domain and do not use the label information to explore the similarity and separability between samples. This would not eliminate the cross-domain bias of samples and may mix cross-domain samples of different classes in the common subspace, misleading the discriminative feature learning of target samples. To tackle the aforementioned problems, we propose a novel matrix factorization-based HDA method called HDA with generalized similarity and dissimilarity regularization (HGSDR). Specifically, we propose a similarity regularizer by establishing the cross-domain Laplacian graph with label information to explore the similarity between cross-domain samples from the identical class. And we propose a dissimilarity regularizer based on the inner product strategy to expand the separability of cross-domain labeled samples from different classes. For unlabeled target samples, we keep their neighbor relationship to preserve the similarity and separability between them in the original space. Hence, the generalized similarity and dissimilarity regularization is built by integrating the above regularizers to facilitate cross-domain samples to form discriminative class distributions. HGSDR can more efficiently match the distributions of the two domains both from the global and sample viewpoints, thereby learning discriminative features for target samples. Extensive experiments on the benchmark datasets demonstrate the superiority of the proposed method against several state-of-the-art methods.
异构域适应(HDA)旨在解决源域和目标域由异构特征表示的迁移学习问题。现有的基于矩阵分解的HDA方法已被证明能有效地学习可迁移特征。然而,这些方法仅保留每个域中样本的原始邻域结构,并未利用标签信息来探索样本之间的相似性和可分性。这无法消除样本的跨域偏差,并且可能在公共子空间中混合不同类别的跨域样本,误导目标样本的判别特征学习。为了解决上述问题,我们提出了一种基于矩阵分解的新型HDA方法,称为具有广义相似性和相异性正则化的HDA(HGSDR)。具体而言,我们通过利用标签信息建立跨域拉普拉斯图来提出一种相似性正则化,以探索来自同一类别的跨域样本之间的相似性。并且我们基于内积策略提出一种相异性正则化,以扩大来自不同类别的跨域标记样本的可分性。对于未标记的目标样本,我们保持它们的邻域关系以在原始空间中保留它们之间的相似性和可分性。因此,通过整合上述正则化来构建广义相似性和相异性正则化,以促进跨域样本形成判别性的类分布。HGSDR可以从全局和样本角度更有效地匹配两个域的分布,从而为目标样本学习判别性特征。在基准数据集上进行的大量实验证明了所提出方法相对于几种现有先进方法的优越性。