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Learning Bound for Parameter Transfer Learning

机译:学习参数转移学习

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We consider a transfer-learning problem by using the parameter transfer approach, where a suitable parameter of feature mapping is learned through one task and applied to another objective task. Then, we introduce the notion of the local stability and parameter transfer learnability of parametric feature mapping, and thereby derive a learning bound for parameter transfer algorithms. As an application of parameter transfer learning, we discuss the performance of sparse coding in self-??taught learning. Although self-taught learning algorithms with plentiful unlabeled data often show excellent empirical performance, their theoretical analysis has not been studied. In this paper, we also provide the first theoretical learning bound for self-taught learning.
机译:我们考虑通过使用参数传输方法来考虑转移学习问题,其中通过一个任务学习了特征映射的合适参数并应用于另一个客观任务。然后,我们介绍参数特征映射的本地稳定性和参数传递可读性的概念,从而导出用于参数传输算法的学习。作为参数转移学习的应用,我们讨论了自我中学学习中稀疏编码的性能。虽然具有丰富未标记数据的自学学习算法经常显示出优异的实证性能,但其理论分析尚未研究。在本文中,我们还为自学学习提供了第一个理论学习。

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