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首页> 外文期刊>Neural Networks and Learning Systems, IEEE Transactions on >Kernel Recursive Least-Squares Tracker for Time-Varying Regression
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Kernel Recursive Least-Squares Tracker for Time-Varying Regression

机译:随时间变化的内核递归最小二乘跟踪器

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摘要

In this paper, we introduce a kernel recursive least-squares (KRLS) algorithm that is able to track nonlinear, time-varying relationships in data. To this purpose, we first derive the standard KRLS equations from a Bayesian perspective (including a sensible approach to pruning) and then take advantage of this framework to incorporate forgetting in a consistent way, thus enabling the algorithm to perform tracking in nonstationary scenarios. The resulting method is the first kernel adaptive filtering algorithm that includes a forgetting factor in a principled and numerically stable manner. In addition to its tracking ability, it has a number of appealing properties. It is online, requires a fixed amount of memory and computation per time step, incorporates regularization in a natural manner and provides confidence intervals along with each prediction. We include experimental results that support the theory as well as illustrate the efficiency of the proposed algorithm.
机译:在本文中,我们介绍了一种内核递归最小二乘(KRLS)算法,该算法能够跟踪数据中的非线性,时变关系。为此,我们首先从贝叶斯的角度(包括明智的修剪方法)得出标准的KRLS方程,然后利用此框架以一致的方式合并遗忘,从而使算法能够在非平稳场景中执行跟踪。所得方法是第一个内核自适应滤波算法,该算法以原则上和数值上稳定的方式包含遗忘因子。除了其跟踪能力外,它还具有许多吸引人的特性。它是在线的,每个时间步需要固定数量的内存和计算,以自然的方式合并正则化,并随每个预测提供置信区间。我们包括支持该理论的实验结果,并说明了所提出算法的效率。

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