开集异构域自适应:理论分析与算法。

Thai-Hoang Pham, Yuanlong Wang, Changchang Yin, Xueru Zhang, Ping Zhang
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引用次数: 0

摘要

领域适应(DA)通过从源领域学习模型来解决分布转移的问题,该模型可以推广到目标领域。然而,大多数现有的数据分析方法都是为源域和目标域数据位于同一特征空间的场景而设计的,这限制了它们在实际情况中的适用性。近年来,为了解决源域和目标域之间的异构特征空间所带来的挑战,引入了异构数据分析(HeDA)方法。尽管取得了成功,但当前的HeDA技术在特征空间和标签空间不匹配时仍存在不足。为了解决这个问题,本文探讨了一种新的数据处理方案,称为开放集HeDA (OSHeDA)。在OSHeDA中,模型不仅要处理特征空间的异质性,而且要识别属于新类的样本。为了解决这一挑战,我们首先开发了一个新的理论框架,该框架构建了目标域预测误差的学习边界。在此框架的指导下,我们提出了一种新的数据分析方法,称为OSHeDA的表示学习(RL-OSHeDA)。该方法旨在同时在异构数据源之间传递知识并识别新类。文本、图像和临床数据的实验证明了我们算法的有效性。模型实现可从https://github.com/pth1993/OSHeDA获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Open-Set Heterogeneous Domain Adaptation: Theoretical Analysis and Algorithm.

Domain adaptation (DA) tackles the issue of distribution shift by learning a model from a source domain that generalizes to a target domain. However, most existing DA methods are designed for scenarios where the source and target domain data lie within the same feature space, which limits their applicability in real-world situations. Recently, heterogeneous DA (HeDA) methods have been introduced to address the challenges posed by heterogeneous feature space between source and target domains. Despite their successes, current HeDA techniques fall short when there is a mismatch in both feature and label spaces. To address this, this paper explores a new DA scenario called open-set HeDA (OSHeDA). In OSHeDA, the model must not only handle heterogeneity in feature space but also identify samples belonging to novel classes. To tackle this challenge, we first develop a novel theoretical framework that constructs learning bounds for prediction error on target domain. Guided by this framework, we propose a new DA method called Representation Learning for OSHeDA (RL-OSHeDA). This method is designed to simultaneously transfer knowledge between heterogeneous data sources and identify novel classes. Experiments across text, image, and clinical data demonstrate the effectiveness of our algorithm. Model implementation is available at https://github.com/pth1993/OSHeDA.

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