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A constrained-syntax genetic programming system for discovering classification rules: application to medical data sets

机译:用于发现分类规则的约束语法遗传编程系统:在医学数据集上的应用

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This paper proposes a new constrained-syntax genetic programming (GP) algorithm for discovering classification rules in medical data sets. The proposed GP contains several syntactic constraints to be enforced by the system using a disjunctive normal form representation, so that individuals represent valid rule sets that are easy to interpret. The GP is compared with C4.5, a well-known decision-tree-building algorithm, and with another GP that uses Boolean inputs (BGP), in five medical data sets: chest pain, Ljubljana breast cancer, dermatology, Wisconsin breast cancer, and pediatric adrenocortical tumor. For this last data set a new preprocessing step was devised for survival prediction. Computational experiments show that, overall, the GP algorithm obtained good results with respect to predictive accuracy and rule comprehensibility, by comparison with C4.5 and BGP.
机译:本文提出了一种新的约束语法遗传规划(GP)算法,用于发现医学数据集的分类规则。拟议的GP包含几个语法约束,系统将使用析取范式形式表示法来强制执行这些语法约束,从而使个人代表易于解释的有效规则集。在五个医学数据集中,将GP与著名的决策树构建算法C4.5以及使用布尔输入(BGP)的另一个GP进行了比较:胸痛,卢布尔雅那乳腺癌,皮肤病学,威斯康星州乳腺癌和小儿肾上腺皮质肿瘤。对于这最后一个数据集,设计了一个新的预处理步骤来进行生存预测。计算实验表明,总体而言,与C4.5和BGP相比,GP算法在预测准确性和规则可理解性方面均取得了良好的效果。

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