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Evolving recurrent perceptrons for time-series modeling

机译:不断发展的递归感知器,用于时间序列建模

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摘要

Evolutionary programming, a systematic multi-agent stochastic search technique, is used to generate recurrent perceptrons (nonlinear IIR filters). A hybrid optimization scheme is proposed that embeds a single-agent stochastic search technique, the method of Solis and Wets, into the evolutionary programming paradigm. The proposed hybrid optimization approach is further augmented by "blending" randomly selected parent vectors to create additional offspring. The first part of this work investigates the performance of the suggested hybrid stochastic search method. After demonstration on the Bohachevsky and Rosenbrock response surfaces, the hybrid stochastic optimization approach is applied in determining both the model order and the coefficients of recurrent perceptron time-series models. An information criterion is used to evaluate each recurrent perceptron structure as a candidate solution. It is speculated that the stochastic training method implemented in this study for training recurrent perceptrons can be used to train perceptron networks that have radically recurrent architectures.
机译:进化规划是一种系统化的多主体随机搜索技术,用于生成递归感知器(非线性IIR滤波器)。提出了一种混合优化方案,该方案将单代理随机搜索技术(Solis和Wets方法)嵌入到进化规划范例中。通过“混合”随机选择的亲代载体进一步增强了拟议的杂交优化方法,以创建其他后代。这项工作的第一部分研究了建议的混合随机搜索方法的性能。在Bohachevsky和Rosenbrock响应面上进行演示后,将混合随机优化方法应用于确定模型阶数和递归感知器时间序列模型的系数。信息准则用于评估每个递归感知器结构作为候选解决方案。据推测,本研究中用于训练递归感知器的随机训练方法可用于训练具有根本递归架构的感知器网络。

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