Domain generalization aims to improve the generalization capability of machine learning systems to out-of-distribution (OOD) data. Existing domain generalization techniques embark upon stationary and discrete environments to tackle the generalization issue caused by OOD data. However, many real-world tasks in non-stationary environments (e.g. self-driven car system, sensor measures) involve more complex and continuously evolving domain drift, which raises new challenges for the problem of domain generalization. In this paper, we formulate the aforementioned setting as the problem of evolving domain generalization. Specifically, we propose to introduce a probabilistic framework called Latent Structure-aware Sequential Autoencoder (LSSAE) to tackle the problem of evolving domain generalization via exploring the underlying continuous structure in the latent space of deep neural networks, where we aim to identify two major factors namely covariate shift and concept shift accounting for distribution shift in non-stationary environments. Experimental results on both synthetic and real-world datasets show that LSSAE can lead to superior performances based on the evolving domain generalization setting.
翻译:现有一般化技术从固定和离散的环境开始,处理OOD数据引起的一般化问题,然而,非静止环境中的许多现实世界任务(如自驱动汽车系统、传感器措施)涉及更为复杂和不断演变的域流,这给域流问题提出了新的挑战。在本文件中,我们将上述设置作为正在演变的域泛化问题来拟订。具体地说,我们提议采用一个称为Lentant结构序列自动电解器(LSSAE)的概率化框架,通过探索深神经网络潜在空间的潜在连续结构来解决不断变化的域泛化问题,我们的目标是查明两个主要因素,即共变式转移和概念转移核算非静止环境中的分布转移。合成和真实世界数据集的实验结果显示,LSSAE可导致根据不断演变的域泛化设置产生优异性。