Diabetes is one of the chronic diseases, which is increasing from year to year. The problems begin when diabetes is not detected at an early phase and diagnosed properly at the appropriate time. Different machine learning techniques, as well as ontology-based ML techniques, have recently played an important role in medical science by developing an automated system that can detect diabetes patients. This paper provides a comparative study and review of the most popular machine learning techniques and ontology-based Machine Learning classification. Various types of classification algorithms were considered namely: SVM, KNN, ANN, Naive Bayes, Logistic regression, and Decision Tree. The results are evaluated based on performance metrics like Recall, Accuracy, Precision, and F-Measure that are derived from the confusion matrix. The experimental results showed that the best accuracy goes for ontology classifiers and SVM.
翻译:糖尿病是慢性疾病之一,这种疾病逐年增加,问题始于糖尿病没有在早期发现,而且没有在适当的时候适当诊断。不同的机器学习技术以及基于肿瘤的ML技术最近通过开发一个能够检测糖尿病患者的自动化系统,在医学科学中发挥了重要作用。本文对最流行的机器学习技术和基于肿瘤的机器学习分类进行了比较研究和审查。各种分类算法,即:SVM、KNN、ANNE、Nive Bayes、Fulter Returkets和Discount Tre。结果根据复苏、精度、精度、精度和F-计量等性能指标评估,这些指标来自混乱矩阵。实验结果显示,最佳精确度用于肿瘤分类和SVM。