一种基于群体优化算法的特征选择包装方法

Hossam M. Zawbaa, E. Emary, A. Hassanien, B. Pârv
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引用次数: 16

摘要

本文提出了一种基于社交蜘蛛优化(SSO)的特征选择系统。该系统采用单点登录作为搜索方法,寻找最优特征集,最大限度地提高分类性能,模拟自然界中社会性蜘蛛的合作行为机制。提出的单点登录算法考虑雄性蜘蛛和雌性蜘蛛两种不同的搜索代理(社会成员),根据合作群体的生物学规律,模拟一组蜘蛛相互作用。根据蜘蛛的性别,每只蜘蛛(个体)都在模拟一组不同的进化算子,这些算子具有不同的合作行为,这些行为在群体中很常见。在18个不同的数据集上使用不同的评价标准对该系统进行了评价,并与粒子群算法和遗传算法进行了比较。单点登录算法使用不同的评价指标,证明了其分类性能的先进性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A wrapper approach for feature selection based on swarm optimization algorithm inspired from the behavior of social-spiders
In this paper, a proposed system for feature selection based on social spider optimization (SSO) is proposed. SSO is used in the proposed system as searching method to find optimal feature set maximizing classification performance and mimics the cooperative behavior mechanism of social spiders in nature. The proposed SSO algorithm considers two different search agents (social members) male and female spiders, that simulate a group of spiders with interaction to each other based on the biological laws of the cooperative colony. Depending on spider gender, each spider (individual) is simulating a set of different evolutionary operators of different cooperative behaviors that are typically found in the colony. The proposed system is evaluated using different evaluation criteria on 18 different datasets, which compared with two common search methods namely particle swarm optimization (PSO), and genetic algorithm (GA). SSO algorithm proves an advance in classification performance using different evaluation indicators.
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