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Feature Selection Approach Based on Social Spider Algorithm: Case Study on Abdominal CT Liver Tumor

机译:基于社会蜘蛛算法的特征选择方法-以腹部CT肝肿瘤为例

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This paper addresses a new subset feature selection performed by new Social Spider Optimization algorithm (SSOA) to find optimal regions of the complex search space through the interaction of individuals in the population. SSOA is a new evolutionary computation technique which mimics the behavior of cooperative social-spiders based on the biological laws of the cooperative colony. The performance of SSOA associated with two reasons: (a) operators allow to increasing find the global optima in the search space, and (b) division of the population into male and female, provides the use of different rates between exploration and exploitation during the evolution process. A theoretical analysis on abdominal CT liver tumor dataset that models the number of correctly classified data is proposed using Confusion Matrix, Precision, Recall, and accuracy. The results show that the mechanism of SSOA provides very good exploration, local minima avoidance, and exploitation simultaneously.
机译:本文介绍了由新的社交蜘蛛优化算法(SSOA)执行的新子集特征选择,以通过种群中个体之间的交互来找到复杂搜索空间的最佳区域。 SSOA是一种新的进化计算技术,它根据合作社殖民地的生物规律模仿合作社社会蜘蛛的行为。 SSOA的表现与两个原因有关:(a)运营商允许在搜索空间中增加对全局最优值的寻找;(b)人口分为男性和女性,从而在勘探和开发期间使用不同的比率进化过程。提出了使用混淆矩阵,精度,召回率和准确性对腹部CT肝肿瘤数据集建模正确分类数据数量的理论分析。结果表明,SSOA的机制提供了很好的探索,避免局部极小值和同时开发的能力。

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