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Evolutionary Multi-Objective Optimization of Fuzzy Rule-Based Classifiers in the ROC Space

机译:ROC空间中基于模糊规则的分类器的进化多目标优化

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An approach to select the most suitable fuzzy rule-based binary classifier to a specific application is proposed. First, an evolutionary three-objective optimization algorithm is applied to generate an approximation of a Pareto front composed of fuzzy rule-based binary classifiers with different trade-offs between accuracy and complexity. Accuracy is measured in terms of sensitivity and specificity, whereas complexity is computed as sum of the conditions which compose the antecedents of the rules included in the classifiers. Thus, low values of complexity correspond to fuzzy systems characterized by a low number of rules and a low number of input variables actually used in each rule. This ensures a high comprehensibility of the classifiers. Then, the most suitable classifier is selected by using the ROC convex hull method. We discuss the application of the proposed approach to generate a classifier for discriminating lung nodules from non-nodules in a computer aided diagnosis (CAD) system. Results obtained on a real data set extracted from lung CT images are also discussed.
机译:提出了一种选择最适合的基于模糊规则的二进制分类器到特定应用程序的方法。首先,应用进化的三目标优化算法来生成由基于模糊规则的二进制分类器组成的帕累托前部的近似,在精度和复杂性之间具有不同的权衡。在灵敏度和特异性方面测量精度,而复杂性被计算为构成分类器中包含规则的前提的条件的总和。因此,复杂性的低值对应于特征的模糊系统,其规则数量低,并且在每个规则中实际使用的少量输入变量。这确保了分类器的高可理解性。然后,通过使用ROC CONVEX HULL方法选择最合适的分类器。我们讨论所提出的方法的应用来生成分类器,用于从计算机辅助诊断(CAD)系统中的非结节中辨别肺结节。还讨论了从肺CT图像中提取的真实数据集获得的结果。

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