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Diabetes Disease Prediction Using Machine Learning Algorithms

机译:使用机器学习算法预测糖尿病疾病预测

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This paper deals with the prediction of Diabetes Disease by performing an analysis of five supervised machine learning algorithms, i.e. K-Nearest Neighbors, Naïve Baye, Decision Tree Classifier, Random Forest and Support Vector Machine. Further, by incorporating all the present risk factors of the dataset, we have observed a stable accuracy after classifying and performing cross-validation. We managed to achieve a stable and highest accuracy of 76% with KNN classifier and remaining all other classifiers also give a stable accuracy of above 70%. We analyzed why specific Machine Learning classifiers do not yield stable and good accuracy by visualizing the training and testing accuracy and examining model overfitting and model underfitting. The main goal of this paper is to find the most optimal results in terms of accuracy and computational time for Diabetes disease prediction.
机译:本文通过对五个监督机器学习算法进行分析,提出了对糖尿病疾病的预测,即K-Indection邻居,NaïveBaye,决策树分类器,随机林和支持向量机。 此外,通过结合数据集的所有当前风险因素,我们在分类和执行交叉验证后观察到稳定的准确性。 我们设法通过KNN分类器实现了76%的稳定和最高精度,并且剩余所有其他分类器也给出稳定的准确性,高于70%。 我们分析了为什么特定机器学习分类器不能通过可视化培训和测试精度和检查模型过度装备和模型底层来产生稳定和良好的准确性。 本文的主要目标是在糖尿病疾病预测的准确性和计算时间方面找到最佳结果。

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