Sistem Informasi Pengelompokan Pembayaran Denda Tilang Menggunakan Algoritma K-Means Clustering

Nana Suarna, Nining Rahaningsih, Nana Mulyanasari, Usup Supendi
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Abstract

This study Violation can be defined as a situation where there is a mismatch between the rules and implementation. The regulation is contained in Law Number 22 Year 2009, concerning "Road Traffic and Transportation" which has been stipulated by the state and is valid legally. The current problem shows, there is no information service system for ticket data management, unable to manage the process of grouping the results of the payment of fines properly, because the process is still manual by checking the data of offenders who have made payments, so it takes longer to process the grouping and data management payment results. The objectives of this study are: Knowing the success of the k-means clustering algorithm in the process of grouping the ticket data to the process of grouping the results of the payment of fines. This research uses the clustering method with the k-means algorithm which is one of the algorithms for the formation of data clusters. This algorithm works by dividing the data into k-clusters by grouping data based on certain classes which are then formulated the results by analyzing the articles that are violated and average. the total amount of the penalty payment. Research shows that information services for ticket data management using the k means clustering algorithm can simplify the process of grouping the payment of fines by more than 70%. This can be proven through the results of the hypothesis test which states that t count is smaller than t table with a value of -2.430 <2.178 so that Ha can be accepted and H0 is rejected.
信息系统使用k - memeling算法对罚金进行分类
本研究违规可以定义为规则与执行不匹配的情况。本规定载于2009年第22号法律《道路交通运输》,是国家规定的具有法律效力的法律。目前存在的问题是,没有罚单数据管理的信息服务系统,无法对罚款缴费结果分组的过程进行适当的管理,因为这个过程仍然是手工的,通过核对已经缴费的违规者的数据,所以分组和数据管理缴费结果的处理时间较长。本研究的目标是:了解k-means聚类算法在对罚单数据进行分组的过程中是否成功到对罚款支付结果进行分组的过程中。本研究采用k-means算法聚类方法,k-means算法是数据聚类形成的算法之一。该算法的工作原理是将数据分成k个簇,根据特定的类将数据分组,然后通过分析违反和平均的文章来制定结果。罚款总额。研究表明,使用k均值聚类算法进行罚单数据管理的信息服务,可以将罚款分组支付的过程简化70%以上。这可以通过假设检验的结果来证明,假设检验的结果表明,t计数小于t表,其值为-2.430 <2.178,因此可以接受Ha,拒绝H0。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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