基于多核流的主动学习

Jeongmin Chae, Songnam Hong
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引用次数: 1

摘要

在线多核学习(OMKL)在非线性函数学习任务中具有很好的性能。利用随机特征(RF)近似,OMKL的主要缺点(称为维度诅咒)最近得到了缓解。这些优点使基于rf的OMKL在实践中得到考虑。本文介绍了一个新的研究问题,即基于流的主动多核学习(AMKL),该问题允许学习者根据选择标准从oracle中选择一些数据进行标记。这在许多实际应用中是必要的,因为获得真正的标签是昂贵或耗时的。我们从理论上证明了所提出的AMKL实现了最优的次线性后悔$\mathcal{O}(\sqrt{T})$,这表明所提出的选择准则确实避免了不必要的标签请求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stream-Based Active Learning with Multiple Kernels
Online multiple kernel learning (OMKL) has provided an attractive performance in nonlinear function learning tasks. Leveraging a random feature (RF) approximation, the major drawback of OMKL, known as the curse of dimensionality, has been recently alleviated. These advantages enable RF-based OMKL to be considered in practice. In this paper we introduce a new research problem, named stream-based active multiple kernel learning (AMKL), where a learner is allowed to label some selected data from an oracle according to a selection criterion. This is necessary in many real-world applications since acquiring a true label is costly or time-consuming. We theoretically prove that the proposed AMKL achieves an optimal sublinear regret $\mathcal{O}(\sqrt{T})$ as in OMKL with little labeled data, implying that the proposed selection criterion indeed avoids unnecessary label-requests.
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