ASSESSMENT AND COMPARISON OF MACHINE LEARNING ALGORITHM CAPABILITY IN SPATIAL MODELING OF DENGUE FEVER VULNERABILITY BASED ON LANDSAT IMAGE 8 OLI/TIRS

Rahmat Azul Mizan, P. Widayani, N. M. Farda
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Abstract

The spread of dengue fever in Indonesia has become a major health problem. Spatial modeling for the distribution of dengue fever vulnerability is an important step to support the planning and mitigation of dengue fever in Indonesia. This study aims to assess and compare the capability of two machine learning algorithms to create a spatial model of dengue fever vulnerability. The research was conducted in Baubau City, Southeast Sulawesi Province by taking 129 cases that occurred from 2015 to February 2016. In this study, the model was created using R software and machine learning algorithms including support vector machine (SVM) and random forest (RF). The six modeling variables involved include land use/cover, BLFEI, NDVI, LST, rainfall and humidity extracted from Landsat 8 OLI/TIRS imagery as well as BMKG (Meteorological, Climatological, and Geophysical Agency of Indonesia) and BWS climate data. The model's capability was assessed using the Area Under Curve-Receiver Operating Characteristic (AUC-ROC) curve. The results of the research show that both algorithms provide excellent model accuracy with AUC values of 1 for SVM and 0.997 for RF with SVM as the best algorithm for modeling dengue fever in Baubau City.Keywords: Machine Learning, Vulnerability, Dengue Fever, Landsat 8 Image
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基于landsat影像8 oli / tirs的登革热脆弱性空间建模机器学习算法能力评估与比较
登革热在印度尼西亚的传播已成为一个主要的卫生问题。为登革热易感性分布建立空间模型是支持印度尼西亚登革热规划和缓解工作的一个重要步骤。本研究旨在评估和比较两种机器学习算法创建登革热脆弱性空间模型的能力。该研究在苏拉威西省东南部的Baubau市进行,选取了2015年至2016年2月发生的129例病例。在本研究中,使用R软件和机器学习算法(包括支持向量机(SVM)和随机森林(RF))创建模型。所涉及的6个建模变量包括土地利用/覆盖、BLFEI、NDVI、LST、降雨和湿度,这些数据提取自Landsat 8 OLI/TIRS图像以及印度尼西亚气象、气候和地球物理局(BMKG)和BWS气候数据。使用曲线下面积-受试者工作特征(AUC-ROC)曲线评估模型的能力。研究结果表明,两种算法均具有良好的模型精度,SVM的AUC值为1,RF的AUC值为0.997,SVM是Baubau市登革热建模的最佳算法。关键词:机器学习,漏洞,登革热,Landsat 8图像
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