通过动态潜在表征增强不断发展的领域泛化能力

Binghui Xie, Yongqiang Chen, Jiaqi Wang, Kaiwen Zhou, Bo Han, Wei Meng, James Cheng
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引用次数: 0

摘要

领域泛化是机器学习系统面临的一个重要挑战。先前的领域泛化方法侧重于提取多个静态领域的领域不变特征,从而实现对新领域的泛化。然而,在非静态任务中,新领域在时间等底层连续结构中不断演化,仅仅提取不变特征不足以泛化到不断演化的新领域。然而,由于演化特征和不变特征之间存在冲突,要在一个模型中同时学习这两种特征并非易事。为了弥补这一缺陷,我们建立了因果模型来描述这两种模式的分布变化,并提出通过一种名为 "基于互信息的序列自动编码器(MISTS)"的新框架来学习动态和不变特征。MISTS 在序列自动编码器上采用信息论约束来区分动态特征和不变特征,并利用自适应分类器根据演化信息和不变信息进行预测。我们在合成数据集和真实世界数据集上的实验结果表明,MISTS 成功地捕捉到了演化信息和不变信息,并在演化领域泛化任务中取得了可喜的成果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing Evolving Domain Generalization through Dynamic Latent Representations
Domain generalization is a critical challenge for machine learning systems. Prior domain generalization methods focus on extracting domain-invariant features across several stationary domains to enable generalization to new domains. However, in non-stationary tasks where new domains evolve in an underlying continuous structure, such as time, merely extracting the invariant features is insufficient for generalization to the evolving new domains. Nevertheless, it is non-trivial to learn both evolving and invariant features within a single model due to their conflicts. To bridge this gap, we build causal models to characterize the distribution shifts concerning the two patterns, and propose to learn both dynamic and invariant features via a new framework called Mutual Information-Based Sequential Autoencoders (MISTS). MISTS adopts information theoretic constraints onto sequential autoencoders to disentangle the dynamic and invariant features, and leverage an adaptive classifier to make predictions based on both evolving and invariant information. Our experimental results on both synthetic and real-world datasets demonstrate that MISTS succeeds in capturing both evolving and invariant information, and present promising results in evolving domain generalization tasks.
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