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Understanding How Feature Structure Transfers in Transfer Learning

机译:了解特征结构如何转移学习

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Transfer learning transfers knowledge across domains to improve the learning performance. Since feature structures generally represent the common knowledge across different domains, they can be transferred successfully even though the labeling functions across domains differ arbitrarily. However, theoretical justification for this success has remained elusive. In this paper, motivated by selftaught learning, we regard a set of bases as a feature structure of a domain if the bases can (approximately) reconstruct any observation in this domain. We propose a general analysis scheme to theoretically justify that if the source and target domains share similar feature structures, the source domain feature structure is transferable to the target domain, regardless of the change of the labeling functions across domains. The transferred structure is interpreted to function as a regularization matrix which benefits the learning process of the target domain task. We prove that such transfer enables the corresponding learning algorithms to be uniformly stable. Specifically, we illustrate the existence of feature structure transfer in two well-known transfer learning settings: domain adaptation and learning to learn.
机译:转移学习在域中传输知识以提高学习性能。由于特征结构通常代表不同域的常识,因此即使域跨域的标记功能在任意差异中也可以成功传输。然而,这一成功的理论理由仍然难以捉摸。在本文中,通过自行学习的动机,如果基础可以(大致)在该域中重建任何观察,则将一组基础视为域的特征结构。我们向理论上提出了一般性分析方案,理论上是合理的,如果源和目标域共享类似的特征结构,则无论域域的标记功能的更改如何,源域功能结构都可转换为目标域。转移的结构被解释为用作正则化矩阵,它有利于目标域任务的学习过程。我们证明这种转移使得相应的学习算法能够均匀稳定。具体地,我们说明了两个众所周知的转移学习设置中的特征结构传输的存在:域适应和学习学习。

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