A Weighted Ensemble Model for Prediction of Dengue Occurrence in North India (Chandigarh)

K. Shashvat, A. Kaur
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Abstract

In tropical nations, dengue fever is one of the most widespread vector-borne infections, particularly in developing countries such as India, Bangladesh, and Pakistan. Dengue fever can range from mild to severe fever cases. Dengue fever is an epidemic spread by mosquitos that affects people of all ages in over a hundred countries throughout the world. The research examines real-time series prediction and analysis using three regression models, as well as the development of a weighted average prediction model for infectious illness prediction. The integrated diseases monitoring programme of the Government of India provided monthly statistics on dengue cases from 2014 to 2017. Three regression models were used to analyse data: support vector regression, neural network, and linear regression. Mean Absolute Error, Root Mean Square Error, and Mean Square Error are some of the performance criteria that have been employed. In terms of its effectiveness, it was discovered that the postulated weighted ensemble model performed better. The primary purpose of this project is to reduce prediction errors, and we discovered that our planned weighted ensemble model is more effective in this regard.
预测印度北部昌迪加尔登革热疫情的加权集合模型
在热带国家,登革热是最普遍的媒介传播感染之一,特别是在印度、孟加拉国和巴基斯坦等发展中国家。登革热可分为轻度至重度发热病例。登革热是一种由蚊子传播的流行病,在全世界一百多个国家影响所有年龄段的人。本研究利用三种回归模型对实时序列进行预测和分析,并建立了传染病预测的加权平均预测模型。印度政府的综合疾病监测方案提供了2014年至2017年登革热病例的月度统计数据。采用支持向量回归、神经网络回归和线性回归三种回归模型对数据进行分析。平均绝对误差、均方根误差和均方误差是一些已被采用的性能标准。在有效性方面,发现假设的加权集成模型表现得更好。这个项目的主要目的是减少预测误差,我们发现我们计划的加权集成模型在这方面更有效。
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