层次特征空间中的迁移学习

Hua Zuo, Guangquan Zhang, Vahid Behbood, Jie Lu, Xianli Meng
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引用次数: 4

摘要

迁移学习提供了一种方法,通过使用先前从源任务中学到的知识,更快、更有效地解决目标任务。作为迁移学习方法的一种,基于特征的迁移学习方法旨在寻找源域和目标域之间共享的潜在特征空间。问题是单一的特征空间不能充分利用源域和目标域之间的关系。针对这一问题,本文提出了一种迁移学习方法,利用深度学习提取分层特征空间,使源领域的知识能够在多个不同抽象层次的特征空间中被挖掘和迁移。在实验中,比较了多个特征空间中迁移学习的有效性,这可以帮助我们找到迁移学习的最优特征空间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Transfer Learning in Hierarchical Feature Spaces
Transfer learning provides an approach to solve target tasks more quickly and effectively by using previously acquired knowledge learned from source tasks. As one category of transfer learning approaches, feature-based transfer learning approaches aim to find a latent feature space shared between source and target domains. The issue is that the sole feature space can't exploit the relationship of source domain and target domain fully. To deal with this issue, this paper proposes a transfer learning method that uses deep learning to extract hierarchical feature spaces, so knowledge of source domain can be exploited and transferred in multiple feature spaces with different levels of abstraction. In the experiment, the effectiveness of transfer learning in multiple feature spaces is compared and this can help us find the optimal feature space for transfer learning.
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