Proportionate-Type Steepest Descent and NLMS Algorithms

K. Wagner, M. Doroslovački
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引用次数: 4

Abstract

In this paper, a unified framework for representing proportionate type algorithms is presented. This novel representation enables a systematic approach to the problem of design and analysis of proportionate type algorithms. Within this unified framework, the feasibility of predicting the performance of a stochastic proportionate algorithm by analyzing the performance of its associated deterministic steepest descent algorithm is investigated, and found to have merit. Using this insight, various steepest descent algorithms are studied and used to predict and explain the behavior of their counterpart stochastic algorithms. In particular, it is shown that the mu-PNLMS algorithm possesses robust behavior. In addition to this, the epsiv-PNLMS algorithm is proposed and its performance is evaluated.
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比例型最陡下降和NLMS算法
本文提出了一种表示比例型算法的统一框架。这种新颖的表示使系统的方法来设计和分析比例类型算法的问题。在此统一框架下,通过分析随机比例算法的相关确定性最速下降算法的性能,研究了预测随机比例算法性能的可行性,并发现了其优点。利用这一见解,研究了各种最陡下降算法,并用于预测和解释其对应随机算法的行为。特别地,证明了mu-PNLMS算法具有鲁棒性。在此基础上,提出了epsiv-PNLMS算法并对其性能进行了评价。
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