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H/sup /spl infin// optimality of the LMS algorithm

机译:H / sup / spl infin // LMS算法的最优性

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We show that the celebrated least-mean squares (LMS) adaptive algorithm is H/sup /spl infin// optimal. The LMS algorithm has been long regarded as an approximate solution to either a stochastic or a deterministic least-squares problem, and it essentially amounts to updating the weight vector estimates along the direction of the instantaneous gradient of a quadratic cost function. We show that the LMS can be regarded as the exact solution to a minimization problem in its own right. Namely, we establish that it is a minimax filter: it minimizes the maximum energy gain from the disturbances to the predicted errors, whereas the closely related so-called normalized LMS algorithm minimizes the maximum energy gain from the disturbances to the filtered errors. Moreover, since these algorithms are central H/sup /spl infin// filters, they minimize a certain exponential cost function and are thus also risk-sensitive optimal. We discuss the various implications of these results and show how they provide theoretical justification for the widely observed excellent robustness properties of the LMS filter.
机译:我们证明了著名的最小均方(LMS)自适应算法是H / sup / spl infin //最优的。长期以来,LMS算法一直被认为是随机或确定性最小二乘问题的近似解决方案,它实质上等于沿二次成本函数的瞬时梯度方向更新权重向量估计。我们证明,LMS本身可以被视为最小化问题的精确解决方案。即,我们确定它是一个极大极小滤波器:它将最小化从干扰到预测误差的最大能量增益,而密切相关的所谓的标准化LMS算法将最小化从干扰到滤波后的误差的最大能量增益。此外,由于这些算法是中央H / sup / spl infin //过滤器,因此它们使某个指数成本函数最小化,因此也是风险敏感的最佳算法。我们讨论了这些结果的各种含义,并显示了它们如何为LMS滤波器的广泛观察到的出色鲁棒性提供理论依据。

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