Implementation of Naïve Bayes and K-NN Algorithms in Diagnosing Stunting in Children

Wulan Widhari, Agung Triayudi, Ratih Titi, Komala Sari
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Abstract

Indonesia faces a huge potential risk of stunting, as revealed in the Indonesian Nutrition Status Analysis according to 2022 data, the stunting rate reached 24.22% in 514 districts / cities throughout Indonesia. To prevent stunting in children, early detection can be done. This research was conducted to compare the performance of two algorithms Naive Bayes and K-NN to predict stunting cases in children, to get a better picture of how classification algorithms predict stunting cases with a better level of accuracy and responsiveness, comparison experiments of several algorithms are needed using specific datasets to develop an optimal classification model. Based on the results of performance testing on the K-Nearest Neighbor and Naive Bayes methods in testing the performance of accuracy, precision, recall, and f1-score, the results of performance testing on the naïve bayes method obtained performance values on 30% testing data are accuracy of 71%, precision 71%, recall 76%, and f1-score 73%. The performance results of the K-NN method using the euclidean distance measurement obtained the best performance value, namely accuracy of 97%, precision of 98%, recall of 96%, f1-score of 97% at a value of k = 3. Based on the performance results of the comparison of the Naive Bayes and K-NN methods, it shows that the best classification method on the stunting dataset is the K-NN method because it gets better performance than the Naive Bayes method.
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在诊断儿童发育迟缓中实施奈维贝叶斯算法和 K-NN 算法
印尼面临着巨大的发育迟缓潜在风险,根据2022年的数据,印尼营养状况分析显示,印尼全国514个地区/城市的发育迟缓率达到24.22%。为了预防儿童发育迟缓,可以进行早期检测。本研究旨在比较 Naive Bayes 和 K-NN 两种算法在预测儿童发育迟缓病例方面的性能。为了更好地了解分类算法如何以更高的准确性和响应速度预测发育迟缓病例,需要使用特定数据集对几种算法进行比较实验,以开发出最佳分类模型。根据 K-Nearest Neighbor 和 Naive Bayes 方法在准确度、精确度、召回率和 f1-score 性能测试的结果,在 30% 的测试数据上,Naive Bayes 方法的性能测试结果为准确度 71%、精确度 71%、召回率 76%、f1-score 73%。根据 Naive Bayes 方法和 K-NN 方法的性能比较结果,可以看出在发育迟缓数据集上最好的分类方法是 K-NN 方法,因为它比 Naive Bayes 方法获得了更好的性能。
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