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Chapter 9 Simplified Social Impact Theory Based Optimizer in Feature Subset Selection

机译:第9章基于简化社会影响理论的特征子集选择优化器

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This chapter proposes a simplification of the original Social Impact Theory based Optimizer (oSITO). Based on the experiments with seven benchmark datasets it is shown that the novel method called simplified Social Impact Theory based Optimizer (sSITO) does not degrade the optimization abilities and even leads to smaller testing error and better dimensionality reduction. From these points of view, it also outperforms another well known social optimizer - the binary Particle Swarm Optimization algorithm. The main advantages of the method are the simple implementation and the small number of parameters (two). Additionally, it is empirically shown that the sSITO method even outperforms the nearest neighbor margin based SIMBA algorithm.
机译:本章提出了对原始的基于社会影响理论的优化器(oSITO)的简化。基于七个基准数据集的实验,结果表明,称为简化的基于社会影响理论的优化器(sSITO)的新方法不会降低优化能力,甚至不会导致较小的测试误差和更好的降维效果。从这些角度来看,它也胜过另一个著名的社交优化器-二进制粒子群优化算法。该方法的主要优点是实现简单,参数数量少(两个)。此外,经验表明,sSITO方法甚至优于基于最近邻裕度的SIMBA算法。

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