Authors
Jindong Wang, Cuiling Lan, Chang Liu, Yidong Ouyang, Tao Qin, Wang Lu, Yiqiang Chen, Wenjun Zeng, S Yu Philip
Publication date
2022/5/26
Journal
IEEE transactions on knowledge and data engineering
Volume
35
Issue
8
Pages
8052-8072
Publisher
IEEE
Description
Machine learning systems generally assume that the training and testing distributions are the same. To this end, a key requirement is to develop models that can generalize to unseen distributions. Domain generalization (DG), i.e., out-of-distribution generalization, has attracted increasing interests in recent years. Domain generalization deals with a challenging setting where one or several different but related domain(s) are given, and the goal is to learn a model that can generalize to an unseen test domain. Great progress has been made in the area of domain generalization for years. This paper presents the first review of recent advances in this area. First, we provide a formal definition of domain generalization and discuss several related fields. We then thoroughly review the theories related to domain generalization and carefully analyze the theory behind generalization. We categorize recent algorithms into …
Total citations
202120222023202445188339312
Scholar articles
J Wang, C Lan, C Liu, Y Ouyang, T Qin, W Lu, Y Chen… - IEEE transactions on knowledge and data engineering, 2022