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首页> 外文期刊>IEEE transactions on circuits and systems . I , Regular papers >Analysis of the Desired-Response Influence on the Convergence of Gradient-Based Adaptive Algorithms
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Analysis of the Desired-Response Influence on the Convergence of Gradient-Based Adaptive Algorithms

机译:期望响应对基于梯度的自适应算法收敛性的影响分析

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Although the convergence behavior of gradient-based adaptive algorithms, such as steepest descent and leas mean square (LMS), has been extensively studied, the influence of the desired response on the transient convergence has generally received little attention. However, empirical results show that this signal can have a great impact on the learning curve. In this paper we analyze the influence of the desired response on the transient convergence by making a novel interpretation, from the viewpoint of the desired response, of previous convergence analyses of SD and LMS algorithms. We show that, without prior knowledge that can be used to wisely select the initial weight vector, initial convergence is fast whenever there is high similarity between input and desired response whereas, on the contrary, when there is low similarity between these two signals, convergence is slow from the beginning.
机译:尽管已经广泛研究了基于梯度的自适应算法(例如最速下降和leas均方(LMS))的收敛行为,但所需响应对瞬态收敛的影响通常很少受到关注。但是,经验结果表明,该信号可能会对学习曲线产生很大影响。在本文中,我们通过从期望响应的角度对SD和LMS算法的先前收敛分析做出新颖的解释,从而分析了期望响应对瞬态收敛的影响。我们表明,在没有可以用于明智地选择初始权重向量的先验知识的情况下,只要输入和期望响应之间的相似度很高,初始收敛就很快,而相反,当这两个信号之间的相似度很低时,收敛从一开始就很慢。

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