Ibrahim Rehab Ali, Abualigah Laith, Ewees Ahmed A, Al-Qaness Mohammed A A, Yousri Dalia, Alshathri Samah, Abd Elaziz Mohamed
Department of Mathematics, Faculty of Science, Zagazig University, Zagazig 44519, Egypt.
Faculty of Computer Sciences and Informatics, Amman Arab University, Amman 11953, Jordan.
Entropy (Basel). 2021 Sep 9;23(9):1189. doi: 10.3390/e23091189.
With the widespread use of intelligent information systems, a massive amount of data with lots of irrelevant, noisy, and redundant features are collected; moreover, many features should be handled. Therefore, introducing an efficient feature selection (FS) approach becomes a challenging aim. In the recent decade, various artificial methods and swarm models inspired by biological and social systems have been proposed to solve different problems, including FS. Thus, in this paper, an innovative approach is proposed based on a hybrid integration between two intelligent algorithms, Electric fish optimization (EFO) and the arithmetic optimization algorithm (AOA), to boost the exploration stage of EFO to process the high dimensional FS problems with a remarkable convergence speed. The proposed EFOAOA is examined with eighteen datasets for different real-life applications. The EFOAOA results are compared with a set of recent state-of-the-art optimizers using a set of statistical metrics and the Friedman test. The comparisons show the positive impact of integrating the AOA operator in the EFO, as the proposed EFOAOA can identify the most important features with high accuracy and efficiency. Compared to the other FS methods whereas, it got the lowest features number and the highest accuracy in 50% and 67% of the datasets, respectively.
随着智能信息系统的广泛应用,会收集到大量具有许多无关、噪声和冗余特征的数据;此外,许多特征需要处理。因此,引入一种高效的特征选择(FS)方法成为一项具有挑战性的目标。在最近十年中,人们提出了各种受生物和社会系统启发的人工方法和群体模型来解决不同的问题,包括特征选择。因此,本文提出了一种基于两种智能算法——电鱼优化算法(EFO)和算术优化算法(AOA)的混合集成的创新方法,以增强EFO的探索阶段,从而以显著的收敛速度处理高维特征选择问题。所提出的EFOAOA算法在18个数据集上针对不同的实际应用进行了检验。使用一组统计指标和Friedman检验将EFOAOA算法的结果与一组近期的先进优化器进行了比较。比较结果显示了在EFO中集成AOA算子的积极影响,因为所提出的EFOAOA算法能够高精度、高效率地识别最重要的特征。与其他特征选择方法相比,它在50%和67%的数据集上分别获得了最少的特征数量和最高的准确率。