The Normalized-PSO and Its Application in Attribute Weighted Optimal Problem

Jin Gou, Cheng Wang, Weihua Luo, Jin Gou
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引用次数: 1

Abstract

Traditional PSO(Particle Swarm Optimization) algorithm has the problems of particle cross-border and premature convergence while solving the normalized constrained optimization problem. Our paper uses the attractor and spatial zoom method, and presented the normalized PSO algorithm. Secondly, each attribute is treated equally in the traditional classification algorithm, without considering the differences in attribute measure and contribution, which cause the problem of low classification accuracy. Our paper introduce the use of the normalized PSO algorithm to solve the optimal attribute normalized weighted distance. For example, in KNN classifier, leave-one-out experimental results with multiple UCI data sets show that the classification accuracy using normalization PSO algorithm to calculate normalized weighted distance is higher than using PSO algorithm and traditional none-attribute weighted classifiers.
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归一化粒子群及其在属性加权最优问题中的应用
传统的粒子群优化算法在求解归一化约束优化问题时存在粒子跨界和过早收敛的问题。本文采用吸引子和空间缩放方法,提出了归一化粒子群算法。其次,传统的分类算法对每个属性都一视同仁,没有考虑属性测度和贡献的差异,导致分类精度不高的问题。本文介绍了利用归一化粒子群算法求解最优属性归一化加权距离的方法。例如,在KNN分类器中,多个UCI数据集的留一实验结果表明,使用归一化PSO算法计算归一化加权距离的分类精度高于使用PSO算法和传统的无属性加权分类器。
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