基于粒子群算法和蚁群算法的粗糙约简优化框架

Lustiana Pratiwi, Y. Choo, A. Muda
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引用次数: 6

摘要

粗约简在许多特征选择分析的研究中有着重要的贡献。它被证明是一种确定信息系统中属性集重要性的可靠约简技术。约简计算成功的关键因素是寻找具有最小属性基数的最小约简,这是一个NP-Hard问题。本文提出了一种改进的粒子群/蚁群优化框架,通过降低计算复杂度来提高粗糙约简性能。该框架包括三个阶段的优化过程,即利用粒子群算法进行全局优化、利用蚁群算法进行局部优化和基于差别矩阵的疫苗接种过程。
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A framework of rough reducts optimization based on PSO/ACO hybridized algorithms
Rough reducts has contributed significantly in numerous researches of feature selection analysis. It has been proven as a reliable reduction technique in identifying the importance of attributes set in an information system. The key factor for the success of reducts calculation in finding minimal reduct with minimal cardinality of attributes is an NP-Hard problem. This paper has proposed an improved PSO/ACO optimization framework to enhance rough reduct performance by reducing the computational complexities. The proposed framework consists of a three-stage optimization process, i.e. global optimization with PSO, local optimization with ACO and vaccination process on discernibility matrix.
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