反向传播、Holt-Winter和多项式回归预测巴厘犬咬伤病例的比较

Gede Eridya Bayu, I. K. G. Darma Putra, Ni Kadek Dwi Rusjayanthi
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引用次数: 2

摘要

狂犬病是一种人畜共患疾病,通常通过动物咬伤传染给人类。它会对中枢神经系统造成严重损害,通常是致命的。狗咬伤病例被认为是巴厘岛狂犬病传播的主要原因。政府的预防措施是为了减少因狗咬伤而增加的问题,以免迅速蔓延并造成人员伤亡。数据挖掘是从一组数据中提取知识的一种尝试。本研究采用数据挖掘方法预测巴厘岛犬咬伤病例数。预测是根据过去的相关数据,并将其放入数学模型中,预测未来会发生什么。用于预测狗咬伤病例的数据挖掘方法有反向传播法、冬至法、多项式回归法。此次预测是为了帮助政府预测未来一段时间的狗咬人事件,并制定相应的对策。从2015年到2019年的五年中,利用巴厘岛每月的咬伤病例数据进行预测。犬咬伤病例数据针对每个属性分为4个数据集,即犬咬伤病例数、疫苗接种数、男性死亡人数和女性死亡人数的数据。四个数据集分为训练数据和测试数据,共享80%的训练数据和20%的测试数据。结果表明,反向传播法预测狗咬伤病例数据的平均MAPE错误率为11.59%,而冬至法的平均MAPE错误率为16.05%,多项式回归法的平均MAPE错误率为19.91%。关键词:狗咬伤,狂犬病,预测,反向传播,冬至,多项式回归
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A Comparison Between Backpropagation, Holt-Winter, and Polynomial Regression Methods in Forecasting Dog Bites Cases in Bali
Rabies is a zoonotic disease that is usually transmitted to humans through animal bites. It can cause severe damage to the central nervous system and is generally fatal. Dog bite cases are considered the leading cause of rabies transmission in Bali. The government's preventive action is expected to reduce the problem of increasing the number of dog bite cases so that it does not spread quickly and cause casualties. Data mining is an attempt to extract knowledge from a set of data. The use of data mining in this study is to forecast the number of dog bite cases in Bali. Forecasting predicts what will happen in the future based on relevant data in the past and placing it in a mathematical model. Data mining methods used in forecasting dog bite cases are backpropagation, holt-winters, polynomial regression methods. This forecasting aims to help the government predict dog bite cases in the coming period to prepare appropriate countermeasures. Forecasting is done using data on bite cases every month in Bali province for five years, from 2015 to 2019. Dog bite case data is divided into four datasets for each attribute, namely data on the number of dog bite cases, the number of vaccinations, the number of male deaths, the number of female deaths. The four datasets are divided into training data and testing data to share 80% training data and 20% testing data. The results obtained are that the backpropagation method is better at predicting dog bite case data with an average MAPE error rate of 11.59%, while the holt-winters method has an average MAPE error rate of 16.05%, and the polynomial regression method has an average MAPE error rate of 19.91% Keywords : Dog Bites, Rabies, Forecasting, Backpropagation, Holt-Winter, Polynomial Regression
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