A Novel Multi-objective Affinity Set Classification System: An Investigation of Delayed Diagnosis Detection

Chih H. Wu, Wei-Ting Li, Chin-Chia Hsu, Chi-Hua Li, I-Ching Fang, Chia-Hsiang Wu
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引用次数: 1

Abstract

This paper proposed a novel multi-objective affinity set (MO affinity set) classification system comparing with Ant colony optimization (ACO) and affinity set theory on delayed diagnosis dataset classification. The output of MO affinity set classification rules has the higher accuracy than ACO and traditional affinity set. Furthermore, our MO affinity set classification skips the traditional affinity set k-core method, and has fewer rules. It is better and more easily to apply or to construct a support system if the number of rules is smaller.
一种新的多目标关联集分类系统:延迟诊断检测的研究
针对延迟诊断数据集的分类问题,提出了一种新的多目标亲和集分类系统,并与蚁群算法和亲和集理论进行了比较。MO亲和集分类规则输出比蚁群算法和传统亲和集具有更高的准确率。此外,我们的MO亲和集分类跳过了传统的亲和集k-core方法,规则更少。规则数量越少,应用或构建支持系统就越好,也越容易。
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