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Cross-Domain Recognition by Identifying Joint Subspaces of Source Domain and Target Domain

机译:通过识别源域和目标域的联合子空间进行跨域识别

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摘要

This paper introduces a new method to solve the cross-domain recognition problem. Different from the traditional domain adaption methods which rely on a global domain shift for all classes between the source and target domains, the proposed method is more flexible to capture individual class variations across domains. By adopting a natural and widely used assumption that the data samples from the same class should lay on an intrinsic low-dimensional subspace, even if they come from different domains, the proposed method circumvents the limitation of the global domain shift, and solves the cross-domain recognition by finding the joint subspaces of the source and target domains. Specifically, given labeled samples in the source domain, we construct a subspace for each of the classes. Then we construct subspaces in the target domain, called anchor subspaces, by collecting unlabeled samples that are close to each other and are highly likely to belong to the same class. The corresponding class label is then assigned by minimizing a cost function which reflects the overlap and topological structure consistency between subspaces across the source and target domains, and within the anchor subspaces, respectively. We further combine the anchor subspaces to the corresponding source subspaces to construct the joint subspaces. Subsequently, one-versus-rest support vector machine classifiers are trained using the data samples belonging to the same joint subspaces and applied to unlabeled data in the target domain. We evaluate the proposed method on two widely used datasets: 1) object recognition dataset for computer vision tasks and 2) sentiment classification dataset for natural language processing tasks. Comparison results demonstrate that the proposed method outperforms the comparison methods on both datasets.
机译:本文介绍了一种解决跨域识别问题的新方法。与传统的域适应方法不同,传统的域适应方法依赖于源域和目标域之间所有类的全局域移位,所提出的方法更灵活地捕获跨域的单个类变化。通过采用自然且广泛使用的假设,即来自同一类的数据样本即使位于不同的域,也应位于固有的低维子空间上,从而克服了全局域移位的局限性,并解决了交叉问题。通过找到源域和目标域的联合子空间来进行域识别。具体来说,给定源域中带标签的样本,我们为每个类构造一个子空间。然后,我们通过收集彼此靠近且极有可能属于同一类的未标记样本,在目标域中构造子空间,称为锚子空间。然后,通过最小化成本函数来分配相应的类标签,该成本函数分别反映源域和目标域之间以及锚子空间内的子空间之间的重叠和拓扑结构的一致性。我们进一步将锚子空间组合到相应的源子空间,以构造联合子空间。随后,使用属于相同联合子空间的数据样本训练一个休息支持向量机分类器,并将其应用于目标域中的未标记数据。我们在两个广泛使用的数据集上评估了该方法:1)用于计算机视觉任务的对象识别数据集; 2)用于自然语言处理任务的情感分类数据集。比较结果表明,该方法在两个数据集上均优于比较方法。

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