IMPLEMENTASI METODE SUPPORT VECTOR MACHINE DALAM PREDIKSI PERSEBARAN DEMAM BERDARAH DI KOTA BANDAR LAMPUNG

F. R. Lumbanraja, Rm Sulaiman Sani, D. Kurniawan, A. Irawati
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引用次数: 3

Abstract

Dengue fever is a one of the dangerous diseases and very often causes casualties every year, especially in the tropics or subtropics countries. Dengue fever cases increase during the rainy season, many factors affect the spread of dengue fever, such as vegetation, population and landfills. The aim of this research is to predict the number of cases of Dengue fever using support vector machine. The data used are dengue data in Bandar Lampung City, weather data, population data and distance matrix data between dengue fever events with each other. The amount of data used is 1,080 data with 3 kernels: linear, gaussian and polynomial. In this study four experiments were carried out, the first two experiments were carried out without Feature Selection and the next two experiments were carried out with Feature Selection. After the experiment was found The best performance in the experiment with Feature Selection with 44 Variables. From the experiments conducted, Gaussian kernel achieved the highest R 2 value which is 75.52%, while the Linear kernel and Polynomial Kernel achieved R 2 value of 74.61% and 75.15%, respectively
登革热是一种危险疾病,每年经常造成人员伤亡,特别是在热带或亚热带国家。登革热病例在雨季增加,许多因素影响登革热的传播,如植被、人口和垃圾填埋场。本研究的目的是利用支持向量机预测登革热病例数。所使用的数据是楠榜市的登革热数据、天气数据、人口数据和登革热事件之间的距离矩阵数据。使用的数据量为1080个数据,具有3个核:线性、高斯和多项式。本研究共进行了四个实验,前两个实验不进行Feature Selection,后两个实验进行Feature Selection。经过实验发现在44个变量的特征选择实验中表现最好。从实验来看,高斯核的r2值最高,为75.52%,而线性核和多项式核的r2值分别为74.61%和75.15%
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