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首页> 外文期刊>IEEE Transactions on Signal Processing >Convergence models for Rosenblatt's perceptron learning algorithm
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Convergence models for Rosenblatt's perceptron learning algorithm

机译:Rosenblatt感知器学习算法的收敛模型

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Presents a stochastic analysis of the steady-state and transient convergence properties of a single-layer perceptron for fast learning (large step-size, input-power product). The training data are modeled using a system identification formulation with zero-mean Gaussian inputs. The perceptron weights are adjusted by a learning algorithm equivalent to Rosenblatt's perceptron convergence procedure. It is shown that the convergence points of the algorithm depend on the step size /spl mu/ and the input signal power (variance) /spl sigma//sub x//sup 2/, and that the algorithm is stable essentially for /spl mu/<0. Two coupled nonlinear recursions are derived that accurately model the transient behavior of the algorithm. The authors also examine how these convergence results are affected by noisy perceptron input vectors. Computer simulations are presented to verify the analytical models.
机译:对用于快速学习(大步长,输入功率乘积)的单层感知器的稳态和瞬态收敛特性进行了随机分析。使用具有零均值高斯输入的系统识别公式对训练数据进行建模。感知器权重通过等效于Rosenblatt感知器收敛过程的学习算法进行调整。结果表明,算法的收敛点取决于步长/ spl mu /和输入信号功率(方差)/ spl sigma // sub x // sup 2 /,并且该算法对于/ spl基本稳定mu / <0。推导了两个耦合的非线性递归,可以精确地模拟算法的瞬态行为。作者还研究了噪声感知器输入向量如何影响这些收敛结果。提出了计算机仿真以验证分析模型。

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