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首页> 外文期刊>IEEE Transactions on Signal Processing >Online Kernel-Based Classification Using Adaptive Projection Algorithms
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Online Kernel-Based Classification Using Adaptive Projection Algorithms

机译:基于在线核的自适应投影算法分类

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摘要

The goal of this paper is to derive a novel online algorithm for classification in reproducing kernel hilbert spaces (RKHS) by exploiting projection-based adaptive filtering tools. The paper brings powerful convex analytic and set theoretic estimation arguments in machine learning by revisiting the standard kernel-based classification as the problem of finding a point which belongs to a closed halfspace (a special closed convex set) in an RKHS. In this way, classification in an online setting, where data arrive sequentially, is viewed as the problem of finding a point (classifier) in the nonempty intersection of an infinite sequence of closed halfspaces in the RKHS. Convex analysis is also used to introduce sparsification arguments in the design by imposing an additional simple convex constraint on the norm of the classifier. An algorithmic solution to the resulting optimization problem, where new convex constraints are added every time instant, is given by the recently introduced adaptive projected subgradient method (APSM), which generalizes a number of well-known projection-based adaptive filtering algorithms such as the classical normalized least mean squares (NLMS) and the affine projection algorithm (APA). Under mild conditions, the generated sequence of estimates enjoys monotone approximation, strong convergence, asymptotic optimality, and a characterization of the limit point. Further, we show that the additional convex constraint on the norm of the classifier naturally leads to an online sparsification of the resulting kernel series expansion. We validate the proposed design by considering the adaptive equalization problem of a nonlinear channel, and by comparing it with classical as well as with recently developed stochastic gradient descent techniques.
机译:本文的目的是通过利用基于投影的自适应滤波工具,推导出一种新颖的在线分类算法,用于再现内核希尔伯特空间(RKHS)。本文通过回顾基于核的标准分类作为在RKHS中找到属于封闭半空间(特殊封闭凸集)的点的问题,在机器学习中带来了强大的凸分析和设定理论估计参数。这样,将数据顺序到达的在线设置中的分类视为在RKHS中的无限半封闭空间序列的非空交点中找到点(分类器)的问题。凸分析还通过在分类器的范数上附加一个简单的凸约束,在设计中引入稀疏化参数。最近引入的自适应投影次梯度方法(APSM)给出了针对最终优化问题的算法解决方案,该算法每次都会添加新的凸约束,该算法概括了许多著名的基于投影的自适应滤波算法,例如经典归一化最小均方(NLMS)和仿射投影算法(APA)。在温和条件下,生成的估计序列具有单调近似,强收敛性,渐近最优性和极限点的特征。此外,我们表明,对分类器范数的附加凸约束自然会导致所得核级数展开的在线稀疏化。我们通过考虑非线性通道的自适应均衡问题,并将其与经典以及最近开发的随机梯度下降技术进行比较,来验证所提出的设计。

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