Modeling of citizen science cluster in making decision for readiness towards bogor smart village: An application of fuzzy c-means algorithm

IF 1.4 Q3 OPERATIONS RESEARCH & MANAGEMENT SCIENCE Decision Science Letters Pub Date : 2023-01-01 DOI:10.5267/j.dsl.2023.4.003
E. T. Tosida, R. Setiawan, Irma Anggraeni, Roni Jayawinangun, S. Sukono, Jumadil Saputra
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Abstract

The construction of smart villages has begun in many Indonesian villages, along with the advancement of technology and local economic growth. Villagers must participate in constructing the smart economy-smart village by becoming familiar with the characteristics of the village's inhabitants using the citizen science model. This study intends to categorize villagers so that researchers can assess and decide their level of readiness for a smart economy in an ecosystem based on a smart village. Clustering is required to find communities of residents who are ready based on their traits. Using fuzzy C-Means with a Davied Bouldin Index value of 0.129, the data were divided into 4 clusters. The most important variables were chosen using information from the test's 300 responders, and the Kaiser Mayer Olkin assumption of 0.975 was used to validate the results. Our paper provides new information on how smart village readiness is assessed by the citizen science cluster. It was decided to divide residents into four groups: those who are less prepared (24.33%), those who are somewhat prepared (29.33%), those who are ready ( 25.67%) %), those who are ready (level of participatory knowledge), and those who are very ready for the smart economy (20.67%) based on the cluster model.
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公民科学集群在茂物智慧村准备决策中的建模:模糊c均值算法的应用
随着科技的进步和当地经济的发展,智慧村庄的建设已经在印度尼西亚的许多村庄开始。村民必须运用公民科学模型,通过熟悉村民的特点,参与智慧经济-智慧村的建设。本研究旨在对村民进行分类,以便研究人员能够评估和决定他们在基于智慧村庄的生态系统中对智能经济的准备程度。需要聚类来找到根据他们的特征准备好的居民社区。采用david Bouldin指数为0.129的模糊C-Means将数据分为4类。最重要的变量是使用测试的300个应答者的信息来选择的,并且使用0.975的Kaiser Mayer Olkin假设来验证结果。我们的论文提供了关于公民科学集群如何评估智慧村准备情况的新信息。根据聚类模型,决定将居民分为“准备不足”(24.33%)、“有一定准备”(29.33%)、“准备好”(25.67%)、“准备好”(参与知识水平)、“非常准备”(20.67%)等4个群体。
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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来源期刊
Decision Science Letters
Decision Science Letters Decision Sciences-Decision Sciences (all)
CiteScore
3.40
自引率
5.30%
发文量
49
审稿时长
20 weeks
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