Transfer learning borrows knowledge from a source domain to facilitate learning in a target domain. Two primary issues to be addressed in transfer learning are what and how to transfer. For a pair of domains, adopting different transfer learning algorithms results in different knowledge transferred between them. To discover the optimal transfer learning algorithm that maximally improves the learning performance in the target domain, researchers have to exhaustively explore all existing transfer learning algorithms, which is computationally intractable. As a trade-off, a sub-optimal algorithm is selected, which requires considerable expertise in an ad-hoc way. Meanwhile, it is widely accepted in educational psychology that human beings improve transfer learning skills of deciding what to transfer through meta-cognitive reflection on inductive transfer learning practices. Motivated by this, we propose a novel transfer learning framework known as Learning to Transfer (L2T) to automatically determine what and how to transfer are the best by leveraging previous transfer learning experiences. We establish the L2T framework in two stages: 1) we first learn a reflection function encrypting transfer learning skills from experiences; and 2) we infer what and how to transfer for a newly arrived pair of domains by optimizing the reflection function. Extensive experiments demonstrate the L2T's superiority over several state-of-the-art transfer learning algorithms and its effectiveness on discovering more transferable knowledge.
翻译:在目标领域,为了发现最佳的转移学习算法,可以最大限度地提高目标领域的学习绩效,研究人员必须详尽地探索所有现有的转移学习算法,这种算法在计算上难以实现。我们从两个阶段中建立了L2T框架:1)我们首先学习一种反省功能,从经验中学习学习技能学习技能;2)我们推算出如何和如何转让新到达的区域的可转让性,通过优化其反射功能,发现一些可转让的可转让性2 ;通过优化其可转让性2 ;通过优化其可转让性2 ;通过优化其可转让性2 ;通过优化其可转让性2 ;和(b) 通过优化其可转让性2 ;以及(c) 通过优化其可转让性2 ; (c) 通过优化其可转让性2 ; (d) 展示其可转让性2 ; (d) 通过优化其可转让性能的可转让性能,为新到达的可转让性2 ; (d) 展示其可转让性2 ; (d) 通过优化的可转让性2) 探索的可转让性2 ; (d) 展示其可转让性2)