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Accelerated euclidean direction search algorithm and related relaxation schemes for solving adaptive filtering problem

机译:加速欧几里德方向搜索算法及相关的放松方案,用于解决自适应滤波问题

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The Euclidean Direction Search (EDS) method is a fairly recent algorithm for solving adaptive filtering problem. The method is a direction set based algorithm, where line searches are perform along euclidean directions in a cyclicmanner in order to search for the minimum of the cost function of the problem. In this paper, the EDS algorithm is described in terms of its relationship with relaxation schemes for solving linear system of equations such as the Gauss-Seidel and Jacobi iterative methods. An acceleration parameter, which is commonly used for such methods, are introduced here and its optimum value derived for uncorrelated input signals with mean 0. Verification of optimum acceleration parameter is demonsrated in the framework of an adaptive system modeling problem.
机译:欧几里德方向搜索(EDS)方法是解决自适应滤波问题的相当近最近的算法。该方法是基于方向集的算法,其中线搜索沿着循环员工中的欧几里德方向执行,以便搜索问题的成本函数。在本文中,根据其与释放方案的关系来描述EDS算法,用于求解等式的线性系统,例如Gauss-Seidel和Jacobi迭代方法。此处介绍了通常用于此类方法的加速度参数,并且它导出的最佳值与平均值0的不相关的输入信号导出。在自适应系统建模问题的框架中验证最佳加速度参数的验证。

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