Towards Out-Of-Distribution Generalization: A Survey
Jiashuo Liu, Zheyan Shen, Yue He, Xingxuan Zhang, Renzhe Xu, Han Yu,, Peng Cui

TL;DR
This survey comprehensively reviews the emerging field of Out-of-Distribution (OOD) generalization in machine learning, covering problem definitions, methodologies, benchmarks, and future research directions.
Contribution
It provides the first systematic overview of OOD generalization, categorizing existing methods and discussing their theoretical connections and evaluation practices.
Findings
Categorizes OOD methodologies into three main segments.
Identifies key benchmark datasets for OOD research.
Highlights future directions and challenges in OOD generalization.
Abstract
Traditional machine learning paradigms are based on the assumption that both training and test data follow the same statistical pattern, which is mathematically referred to as Independent and Identically Distributed (). However, in real-world applications, this assumption often fails to hold due to unforeseen distributional shifts, leading to considerable degradation in model performance upon deployment. This observed discrepancy indicates the significance of investigating the Out-of-Distribution (OOD) generalization problem. OOD generalization is an emerging topic of machine learning research that focuses on complex scenarios wherein the distributions of the test data differ from those of the training data. This paper represents the first comprehensive, systematic review of OOD generalization, encompassing a spectrum of aspects from problem definition, methodological…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning · Machine Learning and Data Classification · Machine Learning and Algorithms
