A Survey of Trustworthy Representation Learning Across Domains

Author:

Zhu Ronghang1ORCID,Guo Dongliang2ORCID,Qi Daiqing2ORCID,Chu Zhixuan3ORCID,Yu Xiang4ORCID,Li Sheng2ORCID

Affiliation:

1. University of Georgia, Athens, United States

2. University of Virginia, Charlottesville, United States

3. Ant Group CO Ltd, Hangzhou, China

4. Amazon.com Inc, San Jose, United States

Abstract

As AI systems have obtained significant performance to be deployed widely in our daily lives and human society, people both enjoy the benefits brought by these technologies and suffer many social issues induced by these systems. To make AI systems good enough and trustworthy, plenty of researches have been done to build guidelines for trustworthy AI systems. Machine learning is one of the most important parts of AI systems, and representation learning is the fundamental technology in machine learning. How to make representation learning trustworthy in real-world application, e.g., cross domain scenarios, is very valuable and necessary for both machine learning and AI system fields. Inspired by the concepts in trustworthy AI, we proposed the first trustworthy representation learning across domains framework, which includes four concepts, i.e., robustness, privacy, fairness, and explainability, to give a comprehensive literature review on this research direction. Specifically, we first introduce the details of the proposed trustworthy framework for representation learning across domains. Second, we provide basic notions and comprehensively summarize existing methods for the trustworthy framework from four concepts. Finally, we conclude this survey with insights and discussions on future research directions.

Publisher

Association for Computing Machinery (ACM)

Reference297 articles.

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