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Analysis of Fuzzy C-Means Algorithm on Indonesian Translation of Hadits Text

机译:Hadits文本印尼语翻译的模糊C均值算法分析

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摘要

Hadith is the second source of Islamic religious law after the Al-Qur'an, in the hadith there are many chapters that discuss several cases and will be interesting to be combined with data mining techniques, especially text mining in order to group the hadith into several groups based on Matan (content hadith) automatically. Clustering is a technique of grouping data based on criteria, in clustering has several methods including K-Means and Fuzzy C-Means. This research will try to group the Indonesian translation of Hadith texts and compare K-Means and Fuzzy C-Means algorithms with some parameters and experiments that are determined. This comparison is used to determine the most accurate method in the Hadith clustering. The results of this research indicate that some of the parameters used to affect the results of cluster evaluation, especially in reducing data dimensions. In Silhouette Coefficient and F-Measure calculations, the Fuzzy C-Means method has an accuracy of 0.83079 and 0.97128 while the K-Means method has an accuracy of 0.67828 and 0.95078 with the results above show that the Fuzzy C-Means method is better in grouping the Indonesian hadith text.
机译:圣训是继《古兰经》之后的第二个伊斯兰宗教法渊源,圣训中有许多章节讨论了几种情况,与数据挖掘技术(尤其是文本挖掘)相结合以将圣训归为一类将很有趣。几个基于Matan(内容圣训)的小组。聚类是一种基于标准对数据进行分组的技术,在聚类中有几种方法,包括K均值和模糊C均值。这项研究将尝试对印度尼西亚的Hadith文本进行分组,并将K-Means和Fuzzy C-Means算法与确定的一些参数和实验进行比较。此比较用于确定Hadith聚类中最准确的方法。这项研究的结果表明,某些参数会影响聚类评估的结果,尤其是在减少数据维度方面。在Silhouette系数和F测度计算中,Fuzzy C-Means方法的精度为0.83079和0.97128,而K-Means方法的精度为0.67828和0.95078,以上结果表明,Fuzzy C-Means方法在以下情况下更好。将印尼圣训文本分组。

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