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Generalizing to Unseen Domains: A Survey on Domain Generalization

📅 Published: January 1, 2022 👤 Jindong Wang, Cuiling Lan, Chang Liu et al. 📖 IEEE Transactions on Knowledge and Data Engineering 📊 907 citations
AI-Generated Summary

Machine learning systems generally assume that the training and testing distributions are the same. Third, we introduce the commonly used datasets, applications, and our open-sourced codebase for fair evaluation.

⚡ This is an original paraphrased summary — not copied from the abstract. Full paper available at the source link below.

Key Findings
  • 1 To this end, a key requirement is to develop models that can generalize to unseen distributions.
  • 2 Domain generalization (DG), i.e., out-of-distribution generalization, has attracted increasing interests in recent years.
  • 3 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.
Why It Matters

This research advances how AI systems learn, reason, and solve problems — with direct implications for automation and scientific discovery.

This summary is based on publicly available metadata and abstract. For the full research paper, visit the original source:

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Article Details
Source OpenAlex
Category 🤖 Artificial Intelligence
Published Jan 1, 2022
Journal IEEE Transactions on Knowledge and Data Engineering
DOI 10.1109/tkde.2022.3178128
Citations 907
Authors Jindong Wang, Cuiling Lan, Chang Liu, Yidong Ouyang, Tao Qin