用于高维生物和医学诊断特征选择的增强型电鳗觅食优化算法

Mohammed Azmi Al-Betar, Malik Sh. Braik, Elfadil A. Mohamed, Mohammed A. Awadallah, Mohamed Nasor
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摘要

本文探讨了电鳗觅食优化(EEFO)算法在解决特征选择(FS)问题中的重要性,旨在改善FS在现实世界应用中的实际效益。使用 EEFO 解决 FS 问题有助于实现我们的目标,即提供干净、有用的数据集,为分类和聚类任务提供强大的功效。如今,高维特征选择问题(HFSPs)越来越常见,但这些问题错综复杂,包含大量特征。因此,应仔细选择其中的大量特征,以确定最佳特征子集。由于基本的 EEFO 算法会出现过早收敛的情况,因此在应用于 FS 领域时,有必要增强其全局和局部搜索能力。为了解决这些问题,我们开发了一种二进制增强型 EEFO(BAEEFO)算法,并提出将其用于 HFSP。在原始 EEFO 算法的数学模型中集成了以下策略,从而创建了 BAEEFO:(1)非线性系数的静止行为;(2)狩猎过程中的权重系数和置信度效应;(3)螺旋搜索策略;以及(4)算法更新停滞时的高斯突变和随机扰动。实验结果证实了所提出的 BAEEFO 方法对从 UCI 资源库中收集的 23 个 HFSP 的有效性,与基本 BEEFO 算法相比,准确率提高了 10%。在大多数测试案例中,BAEEFO 的分类准确率超过了其竞争对手,在 90% 的数据集中,BAEEFO 的分类准确率超过了 BEEFO。因此,BAEEFO 在适应度得分和分类准确率方面表现出了很强的竞争力。与竞争对手相比,BAEEFO 以最少的特征选择实现了更高的缩减率。这项研究的结果突出表明,在分类等数据挖掘应用中,亟需使用 FS 来解决维度诅咒问题,并找到非常有用的特征。新的元启发式算法与高效搜索策略相结合,在解决 HFSP 方面的应用,标志着我们在使用该算法解决各种领域的其他实际问题方面又向前迈进了一步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Augmented electric eel foraging optimization algorithm for feature selection with high-dimensional biological and medical diagnosis

Augmented electric eel foraging optimization algorithm for feature selection with high-dimensional biological and medical diagnosis

This paper explores the importance of the electric eel foraging optimization (EEFO) algorithm in addressing feature selection (FS) problems, with the aim of ameliorating the practical benefit of FS in real-world applications. The use of EEFO to solve FS problems props our goal of providing clean and useful datasets that provide robust effectiveness for use in classification and clustering tasks. High-dimensional feature selection problems (HFSPs) are more common nowadays yet intricate where they contain a large number of features. Hence, the vast number of features in them should be carefully selected in order to determine the optimal subset of features. As the basic EEFO algorithm experiences premature convergence, there is a need to enhance its global and local search capabilities when applied in the field of FS. In order to tackle such issues, a binary augmented EEFO (BAEEFO) algorithm was developed and proposed for HFSPs. The following strategies were integrated into the mathematical model of the original EEFO algorithm to create BAEEFO: (1) resting behavior with nonlinear coefficient; (2) weight coefficient and confidence effect in the hunting process; (3) spiral search strategy; and (4) Gaussian mutation and random perturbations when the algorithm update is stagnant. Experimental findings confirm the effectiveness of the proposed BAEEFO method on 23 HFSPs gathered from the UCI repository, recording up to a 10% accuracy increment over the basic BEEFO algorithm. In most test cases, BAEEFO outperformed its competitors in classification accuracy rates and outperformed BEEFO in 90% of the datasets used. Thereby, BAEEFO has demonstrated strong competitiveness in terms of fitness scores and classification accuracy. When compared to its competitors, BAEEFO produced superior reduction rates with the fewest number of features selected. The findings in this research underscore the critical need for FS to combat the curse of dimensionality concerns and find highly useful features in data mining applications such as classification. The use of a new meta-heuristic algorithm incorporated with efficient search strategies in solving HFSPs represents a step forward in using this algorithm to solve other practical real-world problems in a variety of domains.

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