转移回归的整洁域子相似性建模

Pengfei Wei, Ramón Sagarna, Yiping Ke, Y. Ong
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引用次数: 8

摘要

迁移协方差函数在基于高斯过程的迁移学习中得到了广泛的应用,它可以对领域相似性进行建模并自适应地控制跨领域的知识迁移。我们关注黑箱学习场景中的回归问题,并研究了一组相当通用的传递协方差函数T_*,它可以通过多核学习来模拟域的相似性异质性。给出了(i)对任意数据使用T_*验证gp和(ii)提供语义解释的充分必要条件。此外,在此条件下,我们提出了一种计算成本低廉的模型学习规则,该规则可以显式地捕获域的不同子相似性。在一个合成数据集和四个真实数据集上的大量实验证明了学习GP在子相似度捕获和传输性能方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Uncluttered Domain Sub-Similarity Modeling for Transfer Regression
Transfer covariance functions, which can model domain similarities and adaptively control the knowledge transfer across domains, are widely used in Gaussian process (GP) based transfer learning. We focus on regression problems in a black-box learning scenario, and study a family of rather general transfer covariance functions, T_*, that can model the similarity heterogeneity of domains through multiple kernel learning. A necessary and sufficient condition that (i) validates GPs using T_* for any data and (ii) provides semantic interpretations is given. Moreover, building on this condition, we propose a computationally inexpensive model learning rule that can explicitly capture different sub-similarities of domains. Extensive experiments on one synthetic dataset and four real-world datasets demonstrate the effectiveness of the learned GP on the sub-similarity capture and the transfer performance.
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