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Learning from data streams using kernel least-mean-square with multiple kernel-sizes and adaptive step-size

机译:使用具有多个内核大小和自适应阶梯大小的内核最小均值 - 平方从数据流学习

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摘要

A learning task is sequential if its data samples become available over time; kernel adaptive filters (KAFs) are sequential learning algorithms. There are three main challenges in KAFs: (1) selection of an appropriate Mercer kernel; (2) the lack of an effective method to determine kernel-sizes in an online learning context; (3) how to tune the step-size parameter. This work introduces a framework for online prediction that addresses the latter two of these open challenges. The kernel-sizes, unlike traditional KAF formulations, are both created and updated in an online sequential way. Further, to improve convergence time, we propose an adaptive step-size strategy that minimizes the mean-square-error (MSE) using a stochastic gradient algorithm. The proposed framework has been tested on three real-world data sets; results show both faster convergence to relatively low values of MSE and better accuracy when compared with KAF-based methods, long short-term memory, and recurrent neural networks. (C) 2019 Elsevier B.V. All rights reserved.
机译:如果其数据样本随时间可用,则学习任务是顺序的;内核自适应过滤器(KAF)是顺序学习算法。 KAFS有三个主要挑战:(1)选择适当的Mercer内核; (2)缺乏在在线学习背景下确定内核大小的有效方法; (3)如何调整步骤大小参数。这项工作介绍了在线预测的框架,这些框架解决了这些开放挑战的后两项。与传统的KAF配方不同,内核大小都以在线连续的方式创建和更新。此外,为了提高收敛时间,我们提出了一种自适应阶梯大小策略,其使用随机梯度算法最小化平均方误差(MSE)。拟议的框架已经在三个现实世界数据集上进行了测试;结果表明,与基于KAF的方法,短期内存和经常性神经网络相比,MSE的相对较低的MSE值和更好的准确度。 (c)2019 Elsevier B.v.保留所有权利。

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