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Stochastic Analysis of the LMS Algorithm for System Identification With Subspace Inputs

机译:LMS算法用于子空间输入的系统识别的随机分析

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This paper studies the behavior of the low-rank least mean squares (LMS) adaptive algorithm for the general case in which the input transformation may not capture the exact input subspace. It is shown that the Independence Theory and the independent additive noise model are not applicable to this case. A new theoretical model for the weight mean and fluctuation behaviors is developed which incorporates the correlation between successive data vectors (as opposed to the Independence Theory model). The new theory is applied to a network echo cancellation scheme which uses partial-Haar input vector transformations. Comparison of the new model predictions with Monte Carlo simulations shows good-to-excellent agreement, certainly much better than predicted by the Independence Theory based model available in the literature.
机译:本文针对输入变换可能无法捕获准确的输入子空间的一般情况,研究了低秩最小均方(LMS)自适应算法的行为。结果表明,独立理论和独立的加性噪声​​模型不适用于这种情况。建立了一个新的权重均值和波动行为理论模型,该模型纳入了连续数据向量之间的相关性(与独立理论模型相对)。新理论被应用于使用部分Haar输入矢量变换的网络回声消除方案。新模型预测与蒙特卡洛模拟的比较显示出很好的一致性,当然比文献中基于独立理论的模型所预测的要好得多。

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