An Approach for Early Prediction of Diabetes using Firefly Optimization Algorithm

S. K. Mohiddin, Sk. Heena Kousar, V. S. Krishna, S. Anupriya
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引用次数: 1

Abstract

The prediction of diabetes is a challenging task due to the complex and multifactorial nature of the disease. In recent years, machinelearning algorithms have been applied to predict the onset of diabetes using various sets of predictors, such as demographic, clinical, and laboratory data. In this study, we propose a firefly algorithm to identify diabetes and compare its performance with other algorithms. We evaluate the performance of the firefly algorithm using four widemetrics for evaluation:accuracy, precision, recall, and F-score. Our experiments were conducted on a real-world dataset consisting of 768 individuals, of which 268 had diabetes. The training and testing sets were randomly divided into two groups with an 80:20 ratio. We performed the firefly algorithm for feature selection. It is one of the Nature-Inspired Algorithms (NIA). It is used to optimize the parameters using the firefly algorithm. Then the optimized parameters were then used to train the firefly algorithm on the entire training set.The experimental results demonstrate that the firefly algorithm achieves competitive performance compared to other machine learning algorithms in terms of precision, accuracy, F-score, and recall, the firefly method outperforms other algorithms.
基于萤火虫优化算法的糖尿病早期预测方法
由于糖尿病的复杂性和多因素性,预测糖尿病是一项具有挑战性的任务。近年来,机器学习算法已被应用于使用各种预测指标(如人口统计、临床和实验室数据)来预测糖尿病的发病。在这项研究中,我们提出了一种萤火虫算法来识别糖尿病,并将其与其他算法的性能进行了比较。我们使用四种宽度度量来评估萤火虫算法的性能:准确性、精密度、召回率和f分数。我们的实验是在一个由768人组成的真实数据集上进行的,其中268人患有糖尿病。训练集和测试集按80:20的比例随机分为两组。我们使用萤火虫算法进行特征选择。它是自然启发算法(NIA)之一。利用萤火虫算法对参数进行优化。然后利用优化后的参数在整个训练集上对萤火虫算法进行训练。实验结果表明,与其他机器学习算法相比,萤火虫算法在精密度、准确度、F-score和召回率方面都具有竞争力,萤火虫方法优于其他算法。
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