基于正交随机特征的在线多核学习

Yanning Shen, Tianyi Chen, G. Giannakis
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引用次数: 6

摘要

基于核的方法在各种非线性学习任务中具有良好的性能。它们中的大多数依赖于预先选择的内核,其谨慎的选择假定了特定于任务的先验信息。为了克服这一限制,多核学习因其从指定的核字典中选择核的灵活性而受到欢迎。利用随机特征近似及其最近的正交性促进变体,本贡献开发了一种在线多核学习方案,以动态地推断预期的非线性函数。性能分析表明,该算法能够承受次线性后悔。在实际数据集上进行了数值测试,验证了所提算法的有效性。
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Online Multi-Kernel Learning with Orthogonal Random Features
Kernel-based methods have well-appreciated performance in various nonlinear learning tasks. Most of them rely on a preselected kernel, whose prudent choice presumes task-specific prior information. To cope with this limitation, multi-kernel learning has gained popularity thanks to its flexibility in choosing kernels from a prescribed kernel dictionary. Leveraging the random feature approximation and its recent orthogonality-promoting variant, the present contribution develops an online multi-kernel learning scheme to infer the intended nonlinear function ‘on the fly.’ Performance analysis shows that the novel algorithm can afford sublinear regret. Numerical tests on real datasets are carried out to showcase the effectiveness of the proposed algorithms.
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