进化多目标颗粒计算分类器

Hongbing Liu, Mingke Fang, Chang-an Wu
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引用次数: 0

摘要

分类错误率和颗粒数是颗粒计算的两个重要目标。作为两个冲突的目标,同时优化它们是不可能的。提出了进化多目标颗粒计算分类器,以寻求最小分类错误率和最小颗粒数之间的权衡。个体用两层结构表示,第一层由颗粒序列组成,第二层包括颗粒的起点、终点和类别标签。基于重要性的帕累托优势(IPareto)用于两个个体的比较。在进化过程中进行了为颗粒计算设计的交叉操作、联合操作和变异操作。与Pareto前沿相比,IPareto前沿在两类问题和多类问题上对应的分类器更多。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evolutionary multi-objective granular computing classifiers
The classification error rate and the number of granules are two important objectives in granular computing. As two conflict objectives, optimizing them simultaneously is impossible. Evolutionary multi-objective granular computing classifiers are proposed to seek the tradeoff between the minimal classification error rate and the minimal number of granules. The individual is represented as the two-layer structure, the first layer is composed of the sequence of granule, and the second layer includes the beginning points, the end point, and the class labels of granules. Importance-based Pareto (IPareto) dominance is used to the comparison of two individuals. Crossover operation, union operation, and mutation operation designed specially for Granular Computing are performed the evolution process. Compared with Pareto front, IPareto front corresponded to more classifiers for two-class problems and multi-class problems.
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