A Hybrid Approach for Enhancing the Classification Accuracy for Diabetes Disease

Maryam Mohammed Al-Nussairi, M. A. Eljinini
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Abstract

This paper proposes a new training algorithm for artificial neural networks based on an enhanced version of the grey wolf optimizer (GWO) algorithm. The proposed model is used for classifying the patients of diabetes disease. The results showed that the proposed training algorithm enhanced the performance of ANNs with a better classification accuracy as compared to the other state of art training algorithms for the classification of diabetes on publicly available “Pima Indian Diabetes (PID) dataset”. Several experiments have been executed on this dataset with variation in size of the population, techniques to handle missing data, and their impact on classification accuracy has been discussed. Finally, the results are compared with other nature-inspired algorithms trained ANN. EGWO attained better results in terms of classification accuracy than the other algorithms. The convergence curve proved that EGWO had balanced the local and global search abilities because it was faster to reach better positions than the original GWO.
一种提高糖尿病疾病分类准确率的混合方法
本文提出了一种基于增强版灰狼优化器(GWO)算法的人工神经网络训练算法。该模型用于糖尿病患者的分类。结果表明,与其他最先进的训练算法相比,所提出的训练算法增强了人工神经网络的性能,并具有更好的分类精度,用于公开可用的“皮马印第安糖尿病(PID)数据集”的糖尿病分类。在这个数据集上执行了几个实验,其中包含了种群大小的变化,讨论了处理缺失数据的技术及其对分类精度的影响。最后,将结果与其他自然启发算法训练的人工神经网络进行比较。EGWO在分类精度方面取得了较好的结果。收敛曲线证明了EGWO比原GWO更快地到达更好的位置,平衡了局部和全局搜索能力。
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