HOTSPOT PREDICTIVE MODELING USING REGRESSION DECISION TREE ALGORITHM

D. A. Shofiana, Yohana Tri Utami, Yunda Heningtyas
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引用次数: 0

Abstract

Forest fires had always become an international issue influencing many life sectors, including environmental, social, and economic. The forest fire in 2013 was regarded as one of the worst forest fire tragedies in history, not only in Indonesia but also in the world. Detection of hotspots on the earth's surface by the satellite can be an indication of land and forest fire occurrence. This research aims to build a predictive model of monthly hotspots in Rokan Hilir Regency using the regression tree algorithm. Several variables related to weather information are included, such as rainfall, sea surface temperature, and southern oscillation index. This research used 245 training data and 43 testing data, resulting a predictive model with a correlation of 0.875 and an error rate of 0.166. Based on the values, we can conclude that the performance of the model is considerably good.
基于回归决策树算法的热点预测建模
森林火灾一直是影响许多生活部门的国际问题,包括环境、社会和经济。2013年的森林火灾被认为是印尼乃至世界历史上最严重的森林火灾悲剧之一。卫星对地球表面热点地区的探测可以作为陆地和森林火灾发生的指示。本研究旨在利用回归树算法建立罗肯希利尔摄政月热点预测模型。包括与天气信息有关的几个变量,如降雨、海面温度和南方涛动指数。本研究使用245个训练数据和43个测试数据,得到相关性为0.875,错误率为0.166的预测模型。根据这些值,我们可以得出结论,该模型的性能相当好。
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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