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Mean-Square Convergence Analysis of ADALINE Training With Minimum Error Entropy Criterion

机译:具有最小误差熵准则的ADALINE训练的均方收敛分析

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摘要

Recently, the minimum error entropy (MEE) criterion has been used as an information theoretic alternative to traditional mean-square error criterion in supervised learning systems. MEE yields nonquadratic, nonconvex performance surface even for adaptive linear neuron (ADALINE) training, which complicates the theoretical analysis of the method. In this paper, we develop a unified approach for mean-square convergence analysis for ADALINE training under MEE criterion. The weight update equation is formulated in the form of block-data. Based on a block version of energy conservation relation, and under several assumptions, we carry out the mean-square convergence analysis of this class of adaptation algorithm, including mean-square stability, mean-square evolution (transient behavior) and the mean-square steady-state performance. Simulation experimental results agree with the theoretical predictions very well.
机译:最近,在监督学习系统中,最小误差熵(MEE)准则已被用作传统均方误差准则的信息理论替代。即使对于自适应线性神经元(ADALINE)训练,MEE也会产生非二次,非凸的性能曲面,这使该方法的理论分析变得复杂。在本文中,我们开发了一种统一的方法,用于在MEE准则下进行ADALINE训练的均方收敛分析。权重更新方程式以块数据的形式表示。基于能量守恒关系的块形式,并在几个假设下,我们对此类自适应算法进行均方收敛分析,包括均方稳定性,均方演化(瞬态行为)和均方稳态性能。仿真实验结果与理论预测非常吻合。

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