Runanto Runanto, Muhammad Fahmi Mislahudin, Fauzan Azmi Alfiansyah, Maudy Khairunnisa Maisun Taqiyyah, E. T. Tosida
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引用次数: 2
摘要
印尼的城乡发展差距仍然存在。它的发生是因为大规模的城市化因素。印度尼西亚农村的贫困率相对高于城市。为了最大限度地实现城市发展,印度尼西亚农村、弱势地区发展和移民部制定了可持续的村庄发展计划,即村庄可持续发展目标(sustainable development Goals, SDGs),并优化了村庄潜力数据。本研究旨在利用深度学习方法对印度尼西亚2020年的村庄潜力数据进行智能村庄-智能经济分类系统的设计。本研究使用的方法是数据挖掘过程,即KDD(知识发现和数据挖掘)。研究结果表明,得到的最佳模型由2个隐层组成,每层为128层,128层中使用目标类计算分数的准确率达到训练过程准确率的94.93%和测试过程准确率的96%,成功地对智慧村-智慧经济潜力进行了分类。
Potential classification of Smart Village – Smart Economy with Deep Learning methods
Development gap in the city and village is still happening on Indonesia. It happened because of the massive urbanization factors. Poverty in the Indonesian villages are relatively higher than on the urbans. In order to reach the maximal city development, Ministry of Village, Development of Disadvantaged Regions and Transmigration of Indonesia created a sustainable village development program namely Village’s Sustainable Development Goals (SDGs) and optimized the village potential data. This study aimed to design the smart village – smart economy classification system by using deep learning methods on village potential data on Indonesia at 2020. The method used in this study is data mining processes namely KDD (Knowledge Discovery and Data mining). The result in this study showed the best models were obtained which consisting of 2 hidden layers and each layer is 128, 128 layers which using target class from the process of calculating the score is able to reach 94.93% of the accuracy from the training process and 96% on the testing process and succeeded to classify the potentials of smart village – smart economy.