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An improved multi-objective evolutionary optimization of data-mining-based fuzzy decision support systems

机译:基于数据挖掘的模糊决策支持系统的改进多目标进化优化

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The paper presents an approach to designing from data fuzzy decision systems (fuzzy rule-based classifiers (FRBCs)) by means of four multi-objective evolutionary optimization algorithms (MOEOAs) including the well-known NSGA-II, ε-NSGA-II, SPEA2, and our generalization of SPEA2 (referred to as SPEA3). The advantages of SPEA3 (a better-balanced distribution and a higher spread of solutions than for SPEA2) are shown using selected benchmark tests. The main building blocks of our FRBC and the main components of its MOEOA-based optimization are briefly presented. The proposed FRBCs with genetically optimized accuracy-interpretability trade-off are effective and modern tools for intelligent decision support in various areas of applications. In this paper, the application to designing credit-granting decision support system based on Statlog (German Credit Approval) financial benchmark data set is presented. A comparison of our approach employing various MOEOAs is also carried out.
机译:本文提出了一种通过四种多目标进化优化算法(MOEOA)从数据模糊决策系统(基于模糊规则的分类器(FRBC))进行设计的方法,其中包括著名的NSGA-II,ε-NSGA-II, SPEA2,以及我们对SPEA2的概括(称为SPEA3)。使用选定的基准测试显示了SPEA3的优点(比SPEA2更好的平衡分配和更高的解决方案传播)。简要介绍了FRBC的主要组成部分以及基于MOEOA的优化的主要组成部分。拟议的FRBC具有遗传优化的准确性-可解释性的折衷方案,是在各种应用领域中提供智能决策支持的有效且现代的工具。本文介绍了基于Statlog(德国信贷审批)财务基准数据集的信贷授予决策支持系统的设计应用。还对我们采用各种MOEOA的方法进行了比较。

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