糖尿病检测的机器学习技术

O. Awoniran, M. Oyelami, Rhoda Ikono, R. Famutimi, T. Famutimi
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引用次数: 0

摘要

早期发现糖尿病的需要导致了各种智能系统的发展,使用机器学习和人工智能来识别疾病的存在。然而,大多数技术的准确度相对较低。本研究将数据科学技术应用于糖尿病数据集,以提高疾病预测的准确性。这是通过使用虚拟类别预处理数据并应用主成分分析来实现降维的。然后使用支持向量机、随机森林分类器和深度神经网络对系统进行训练。支持向量机、随机森林分类器和深度神经网络的准确率分别为0.76、0.77和0.89。相应地,深度神经网络产生了最高的准确性。该研究得出结论,更好的预处理将提高机器学习算法预测糖尿病的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Machine Learning Technique for Detection of Diabetes Mellitus
The need for early detection of diabetes mellitus has led to the development of various intelligent systems using machine learning and artificial intelligence for the recognition of the presence of the disease. However, most of the techniques have yielded a comparatively lower accuracy. This research applied data science techniques to a dataset of diabetes mellitus to improve the accuracy of the prediction of the disease. This was achieved by pre-processing the data with dummy categories and applying principal components analysis for reduced dimensionality. Support vector machine, random forest classifier, and deep neural networks were then used to train the system. Support vector machine, random forest classifier, and deep neural networks yielded accuracies of 0.76, 0.77, and 0.89 respectively. Correspondingly, deep neural networks yielded the highest accuracy. The study concluded that better pre-processing will improve the accuracy of machine learning algorithms in the prediction of diabetes mellitus.
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