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Operator-valued kernel recursive least squares algorithm

机译:运算符值内核递归最小二乘算法

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The paper develops recursive least square algorithms for nonlinear filtering of multivariate or functional data streams. The framework relies on kernel Hilbert spaces of operators. The results generalize to this framework the kernel recursive least squares developed in the scalar case. We particularly propose two possible extensions of the notion of approximate linear dependence of the regressors, which in the context of the paper, are operators. The development of the algorithms are done in infinite-dimensional spaces using matrices of operators. The algorithms are easily written in finite-dimensional settings using block matrices, and are illustrated in this context for the prediction of a bivariate time series.
机译:本文开发了递归最小二乘算法,用于对多元或功能数据流进行非线性过滤。该框架依赖于运算符的内核希尔伯特空间。结果推广到该框架,在标量情况下开发了内核递归最小二乘。我们特别提出了回归器的近似线性相关性概念的两种可能的扩展,在本文的上下文中,它们是算子。算法的开发是在无穷维空间中使用运算符矩阵完成的。可以使用块矩阵在有限维设置中轻松编写算法,并在此情况下对算法进行说明,以预测双变量时间序列。

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