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A Hybrid Chaotic Particle Swarm Optimization with Differential Evolution for feature selection

机译:特征选择的混合混沌混沌粒子群优化算法。

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The selection of feature subsets has been broadly utilized in data mining and machine learning tasks to produce a solution with a small number of features which improves the classifier's accuracy and it also aims to reduce the dataset dimensionality while still sustaining high classification performance. Particle swarm optimization (PSO), which is inspired by social behaviors of individuals in bird swarms, is a nature-inspired and global optimization algorithm. Particle Swarm Optimization (PSO) has been widely applied to feature selection because of its effectiveness and efficiency. The PSO method is easy to implement and has shown good performance for many real-world optimization tasks. However, since feature selection is a challenging task with a complex search space, PSO has problems with pre-mature convergence and easily gets trapped at local optimum solutions. Hence, the need to balance the search behaviour between exploitation and exploration. In our previous work, a novel chaotic dynamic weight particle swarm optimization (CHPSO) in which a chaotic map and dynamic weight was introduced to improve the search process of PSO for feature selection. Therefore, this paper improved on CHPSO by introducing a hybrid of chaotic particle swarm optimization and differential evolution known as CHPSODE. The search accuracy and performance of the proposed (CHPSODE) algorithms was evaluated on eight commonly used classical benchmark functions. The experimental results showed that the CHPSODE achieves good results in discovering a realistic solution for solving a feature selection problem by balancing the exploration and exploitation search process and as such has proven to be a reliable and efficient metaheuristics algorithm for feature selection.
机译:特征子集的选择已广泛用于数据挖掘和机器学习任务中,以产生具有少量特征的解决方案,从而提高了分类器的准确性,并且还旨在降低数据集维数,同时仍保持较高的分类性能。粒子群优化(PSO)是受自然界全局优化算法启发而来的,它受到鸟类群中个体的社会行为的启发。粒子群优化(PSO)由于其有效性和效率而被广泛应用于特征选择。 PSO方法易于实现,并且在许多实际的优化任务中显示出良好的性能。但是,由于特征选择在复杂的搜索空间中是一项具有挑战性的任务,因此PSO存在过早收敛的问题,并且很容易陷入局部最优解。因此,需要在开发和探索之间平衡搜索行为。在我们之前的工作中,提出了一种新颖的混沌动态权重粒子群优化算法(CHPSO),其中引入了混沌图和动态权重来改进PSO进行特征选择的搜索过程。因此,本文通过引入混沌粒子群优化和差分进化的混合体CHPSODE对CHPSO进行了改进。在八个常用的经典基准函数上评估了所提出的(CHPSODE)算法的搜索准确性和性能。实验结果表明,CHPSODE通过平衡探索和探索搜索过程,在发现解决特征选择问题的实际解决方案中取得了良好的效果,因此被证明是一种可靠,高效的元启发式特征选择算法。

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