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Training Complex Decision Support Systems with Differential Evolution Enhanced by Locally Linear Embedding

机译:通过局部线性嵌入增强差分演化的复杂决策支持系统的训练

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This paper aims at improving the training process of complex decision support systems, where evolutionary algorithms are used to integrate a large number of decision rules in a form of a weighted average. It proposes an enhancement of Differential Evolution by Locally Linear Embedding to process objective functions with correlated variables, which focuses on detecting local dependencies among variables of the objective function by analyzing the manifold in the search space that contains the current population and transforming it to a reduced search space. Experiments performed on some popular benchmark functions as well as on a financial decision support system confirm that the method may significantly improve the search process in the case of objective functions with a large number of variables, which usually occur in many practical applications.
机译:本文旨在改进复杂决策支持系统的训练过程,其中使用进化算法以加权平均值的形式集成大量决策规则。它提出了通过局部线性嵌入来增强差分演化的方法,以处理具有相关变量的目标函数,该方法着重于通过分析包含当前种群的搜索空间中的流形并将其转化为简化的变量来检测目标函数的变量之间的局部依赖性。搜索空间。在一些流行的基准功能以及财务决策支持系统上进行的实验证实,在具有大量变量的目标函数的情况下,该方法可以显着改善搜索过程,而这在许多实际应用中通常会出现。

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