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The partitioned kernel machine algorithm for online learning

机译:用于在线学习的分区内核机算法

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摘要

Kernel machines have been successfully applied to many engineering problems requiring pattern recognition and regression. Kernel machines are a family of machine learning algorithms including support vector machines (SVM) [1], kernel least mean squares adaptive filter (KLMS) [2], and kernel recursive least squares (KRLS) adaptive filter [3] to name a few. In this paper we present the partitioned kernel machine algorithm for use in online learning in virtual environments. The PKM algorithm enhances the accuracy of the computationally efficient KLMS algorithm. The PKM algorithm is an iterative update procedure that focuses on a subset of the stored vectors in the kernel machine buffer. We use a similarity measure for the selection of kernel machine vectors that allow more common vectors to be updated more frequently, and outlier vectors to be updated less frequently. We validate the increased accuracy of our novel algorithm in two separate experimental settings.
机译:内核机器已成功应用于许多需要模式识别和回归的工程问题。内核机器是一系列机器学习算法,包括支持向量机(SVM)[1],内核最小均方自适应滤波器(KLMS)[2]和内核递归最小二乘(KRLS)自适应滤波器[3]。 。在本文中,我们介绍了用于虚拟环境中在线学习的分区内核机器算法。 PKM算法提高了计算效率较高的KLMS算法的准确性。 PKM算法是一个迭代更新过程,重点关注内核机器缓冲区中存储的向量的子集。我们使用相似性度量来选择内核机器向量,从而允许更常见的向量更频繁地更新,而异常的向量则更不频繁地更新。我们在两个单独的实验环境中验证了我们新颖算法的提高的准确性。

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