LGMay 22, 2023

Feasibility of Transfer Learning: A Mathematical Framework

arXiv:2305.12985v111 citations
Originality Incremental advance
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This provides theoretical foundations for transfer learning, which is widely used in machine learning applications.

This paper addresses the feasibility issue of transfer learning by establishing a mathematical framework and formulating it as an optimization problem, demonstrating that an optimal procedure exists under certain technical conditions.

Transfer learning is a popular paradigm for utilizing existing knowledge from previous learning tasks to improve the performance of new ones. It has enjoyed numerous empirical successes and inspired a growing number of theoretical studies. This paper addresses the feasibility issue of transfer learning. It begins by establishing the necessary mathematical concepts and constructing a mathematical framework for transfer learning. It then identifies and formulates the three-step transfer learning procedure as an optimization problem, allowing for the resolution of the feasibility issue. Importantly, it demonstrates that under certain technical conditions, such as appropriate choice of loss functions and data sets, an optimal procedure for transfer learning exists. This study of the feasibility issue brings additional insights into various transfer learning problems. It sheds light on the impact of feature augmentation on model performance, explores potential extensions of domain adaptation, and examines the feasibility of efficient feature extractor transfer in image classification.

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