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Performance enhancement of diabetes prediction by finding optimum K for KNN classifier with feature selection method

机译:通过特征选择方法为KNN分类器找到最佳K来增强糖尿病预测的性能

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Machine learning algorithm plays an important role for the data generation and analysis to ease the difficulties of life. Whereas the disease classification or prediction can be performed using machine learning algorithms. These learning algorithms are applied to enhance the capability of classifiers. In this research experiments, KNN and machine learning methods are used in the prediction model to classify whether the patient is diabetic or non-diabetic. The PIMA diabetes dataset is used for research purpose in the python implemented model. Research study has been performed to improve the performance of KNN classifier by using feature selection method, normalization and considering different number of neighbors. The performance of classifier is measured based on different metrics such as accuracy, precision, sensitivity, specificity, F1 score and error rate.
机译:机器学习算法在数据生成和分析中扮演重要角色,以缓解生活中的困难。而疾病分类或预测可以使用机器学习算法进行。这些学习算法被应用于增强分类器的能力。在这项研究实验中,在预测模型中使用KNN和机器学习方法对患者是糖尿病患者还是非糖尿病患者进行分类。 PIMA糖尿病数据集在python实现的模型中用于研究目的。已经进行了研究研究,以通过使用特征选择方法,归一化并考虑不同数目的邻居来提高KNN分类器的性能。分类器的性能是根据不同的指标(例如准确性,准确性,敏感性,特异性,F1得分和错误率)进行衡量的。

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