LGDec 18, 2024

Trustworthy Transfer Learning: A Survey

arXiv:2412.14116v23 citationsh-index: 12JAIR
Originality Synthesis-oriented
AI Analysis

It provides a comprehensive overview for researchers and practitioners, but is incremental as it synthesizes existing work rather than introducing new methods.

This survey tackles the problem of ensuring knowledge transferability and trustworthiness in transfer learning, reviewing theories, algorithms, and applications to address how to measure and enhance transferability and assess trust in transferred knowledge.

Transfer learning aims to transfer knowledge or information from a source domain to a relevant target domain. In this paper, we understand transfer learning from the perspectives of knowledge transferability and trustworthiness. This involves two research questions: How is knowledge transferability quantitatively measured and enhanced across domains? Can we trust the transferred knowledge in the transfer learning process? To answer these questions, this paper provides a comprehensive review of trustworthy transfer learning from various aspects, including problem definitions, theoretical analysis, empirical algorithms, and real-world applications. Specifically, we summarize recent theories and algorithms for understanding knowledge transferability under (within-domain) IID and non-IID assumptions. In addition to knowledge transferability, we review the impact of trustworthiness on transfer learning, e.g., whether the transferred knowledge is adversarially robust or algorithmically fair, how to transfer the knowledge under privacy-preserving constraints, etc. Beyond discussing the current advancements, we highlight the open questions and future directions for understanding transfer learning in a reliable and trustworthy manner.

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