Tri Septiar Syamfithriani, Nita Mirantika, Ragel Trisudarmo
{"title":"Perbandingan Algoritma K-Means dan K-Medoids Untuk Pemetaan Daerah Penanganan Diare Pada Balita di Kabupaten Kuningan","authors":"Tri Septiar Syamfithriani, Nita Mirantika, Ragel Trisudarmo","doi":"10.21456/vol12iss2pp132-139","DOIUrl":null,"url":null,"abstract":"Diarrhea is an endemic disease that contributes to the high mortality rate in Indonesia, especially among children under five. The Kuningan District Health Office had difficulties in monitoring and supervising the spread of diarrheal diseases. This study aims to produce a mapping scheme of priority areas in handling the prevention and control of the spread of diarrheal disease in children under five in Kuningan Regency. The method used is the Data Mining Clustering method by comparing two algorithms, namely the K-Means algorithm and the K-Medoids algorithm. Determination of the optimum number of clusters using the Elbow and Silhouette Coefficient methods. With this method, the result is that in the K-Means algorithm the optimum number of clusters is 3 clusters while the K-Medoids algorithm is 2 clusters. The best cluster evaluation uses the Davies-Bouldin Index (DBI) method and the results show that the K-Means DBI value is always smaller than the K-Medoids algorithm in either 2 clusters or 3 clusters, this shows that the K-Means algorithm is better than the K-Medoids algorithm. Based on these results, it is recommended to map priority areas for handling diarrheal diseases using the K-Means algorithm with 3 clusters, namely medium priority areas consisting of 9 regions, high priority areas consisting of 3 regions and low priority areas consisting of 25 regions. The results of the mapping can be used as input for the Kuningan District Health Office to develop strategies for preventing and preventing diarrheal diseases in children under five.","PeriodicalId":123899,"journal":{"name":"Jurnal Sistem Informasi Bisnis","volume":"17 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2023-01-24","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"1","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Jurnal Sistem Informasi Bisnis","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.21456/vol12iss2pp132-139","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 1
摘要
腹泻是一种地方病,造成印度尼西亚的高死亡率,特别是五岁以下儿童的高死亡率。库宁安区卫生局在监测和监督腹泻疾病的传播方面存在困难。这项研究的目的是制定一个优先领域的地图计划,以预防和控制库宁安县五岁以下儿童腹泻病的传播。通过对K-Means算法和K-Medoids算法两种算法的比较,采用了数据挖掘聚类方法。用肘部和轮廓系数法确定最佳簇数。采用该方法,K-Means算法的最优聚类数为3个,K-Medoids算法的最优聚类数为2个。采用Davies-Bouldin Index (DBI)方法进行聚类评价效果最好,结果表明,无论在2簇还是3簇情况下,K-Means的DBI值始终小于K-Medoids算法,这表明K-Means算法优于K-Medoids算法。在此基础上,建议使用K-Means算法绘制腹泻病处理优先区域,共3个聚类,即中等优先区域包含9个区域,高优先区域包含3个区域,低优先区域包含25个区域。绘制地图的结果可作为库宁安区卫生局的投入,用于制定预防和预防五岁以下儿童腹泻病的战略。
Perbandingan Algoritma K-Means dan K-Medoids Untuk Pemetaan Daerah Penanganan Diare Pada Balita di Kabupaten Kuningan
Diarrhea is an endemic disease that contributes to the high mortality rate in Indonesia, especially among children under five. The Kuningan District Health Office had difficulties in monitoring and supervising the spread of diarrheal diseases. This study aims to produce a mapping scheme of priority areas in handling the prevention and control of the spread of diarrheal disease in children under five in Kuningan Regency. The method used is the Data Mining Clustering method by comparing two algorithms, namely the K-Means algorithm and the K-Medoids algorithm. Determination of the optimum number of clusters using the Elbow and Silhouette Coefficient methods. With this method, the result is that in the K-Means algorithm the optimum number of clusters is 3 clusters while the K-Medoids algorithm is 2 clusters. The best cluster evaluation uses the Davies-Bouldin Index (DBI) method and the results show that the K-Means DBI value is always smaller than the K-Medoids algorithm in either 2 clusters or 3 clusters, this shows that the K-Means algorithm is better than the K-Medoids algorithm. Based on these results, it is recommended to map priority areas for handling diarrheal diseases using the K-Means algorithm with 3 clusters, namely medium priority areas consisting of 9 regions, high priority areas consisting of 3 regions and low priority areas consisting of 25 regions. The results of the mapping can be used as input for the Kuningan District Health Office to develop strategies for preventing and preventing diarrheal diseases in children under five.