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Comparison Performance of C4.5, Na?ve Bayes and K-Nearest Neighbor in Determination Drug Rehabilitation

机译:测定药物康复中C4.5,NA贝雷斯和K最近邻居的比较表现

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The popular data mining classification algorithm is C4. 5, Na?ve Bayes and K-Nearest Neighbor (KNN). To be able to choose the best algorithm one of them can be measured from the level of accuracy, error rate and recall. This can be done by evaluation comparing several algorithms with one model of evaluation techniques. The data used for algorithm evaluation is taken from data of BNN drug rehabilitation of East Kalimantan Province with 550 data, which then divided into training data and data testing. The purpose of this research is to find the best algorithm in determining drug rehabilitation using a K-fold cross-validation algorithm with K = 10 for C4.5, Na?ve Bayes and KNN algorithm. The research variables consist of medical status, employment status, work pattern, employment scale, duration of drug use, drug status, legal status, social status, psychiatric status, and rehabilitation status. Based on the results of the analysis by measuring the performance of the three algorithms using the confusion matrix method, with accuracy, error rate and recall, it is known that the best algorithm is Na?ve Bayes with an accuracy percentage of 80.55% error rate of 19.45% and 70.10% recall.
机译:流行的数据挖掘分类算法是C4。 5,朴素贝叶斯和k近邻(KNN)。为了能够选择其中最好的算法可以从准确,错误率和召回率的水平来测量。这可以通过评价比较了几种算法与评价技术一个模型来完成。用于算法的评估数据是从东加里曼丹省BNN戒毒与550点的数据,然后分为训练数据和测试数据服用。这项研究的目的是寻找在确定使用戒毒最好的算法与K = 10 C4.5,娜交叉验证算法,K-倍?已经贝叶斯和KNN算法。研究变量包括医疗状况,就业状况,工作模式,就业规模,用药时间,用药地位,法律地位,社会地位,精神状况,以及康复状态。基于该分析的,通过测量使用混淆矩阵方法中的三种算法的性能,具有精度,错误率和查全率的结果,已知的是,最好的算法是朴素贝叶斯,误差率80.55%的准确度百分比的19.45%和70.10%的召回。

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