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On the convergence behavior of Rosenblatt's perceptron learning algorithm

机译:论Rosenblatt's Perceptron学习算法的融合行为

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A stochastic analysis of the steady-state and transient convergence properties of a single-layer perceptron is presented. The training data are modeled using a system identification formulation with Gaussian inputs, and the perceptron weights are adjusted by Rosenblatt's learning algorithm. It is shown that the convergence points of the algorithm depend on the step size mu and the input signal power sigma /sub x//sup 2/. Two coupled nonlinear recursions that describe the transient behavior of the algorithm are derived. Computer simulations that verify the analytical models are also presented.
机译:提出了对单层Perceptron的稳态和瞬态收敛性的随机分析。 使用具有高斯输入的系统识别配方进行建模训练数据,并且通过Rosenblatt的学习算法调整了Perceptron权重。 结果表明,算法的收敛点依赖于步长MU和输入信号功率Sigma / Sub X // Sup 2 /。 派生了描述算法瞬态行为的两个耦合非线性递归。 还提出了验证分析模型的计算机模拟。

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