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Comparison between ARIMA and DES Methods of Forecasting Population for Housing Demand in Johor

机译:柔佛州ARIMA和DES人口预测住房需求方法的比较

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Forecasting accuracy is a primary criterion in selecting appropriate method of prediction. Even though there are various methods of forecasting however not all of these methods are able to predict with good accuracy. This paper presents an evaluation of two methods of population forecasting for housing demand. These methods are Autoregressive Integrated Moving Average (ARIMA) and Double Exponential Smoothing (DES). Both of the methods are principally adopting univariate time series analysis which uses past and present data for forecasting. Secondary data obtained from Department of Statistics, Malaysia was used to forecast population for housing demand in Johor. Forecasting processes had generated 14 models to each of the methods and these models where evaluated using Mean Absolute Percentage Error (MAPE). It was found that 14 of Double Exponential Smoothing models and also 14 of ARIMA models had resulted to 1.674% and 5.524% of average MAPE values respectively. Hence, the Double Exponential Smoothing method outperformed the ARIMA method by reducing 4.00 % in forecasting model population for Johor state. These findings help researchers and government agency in selecting appropriate forecasting model for housing demand.
机译:预测准确性是选择适当的预测方法的主要标准。即使存在多种预测方法,但是并非所有这些方法都能够以良好的精度进行预测。本文介绍了对住房需求的两种人口预测方法的评估。这些方法是自回归综合移动平均(ARIMA)和双指数平滑(DES)。两种方法都主要采用单变量时间序列分析,该分析使用过去和现在的数据进行预测。从马来西亚统计局获得的二手数据用于预测柔佛州住房需求的人口。预测过程已针对每种方法生成了14个模型,并使用平均绝对百分比误差(MAPE)评估了这些模型。发现14个双指数平滑模型和14个ARIMA模型分别产生了平均MAPE值的1.674%和5.524%。因此,在柔佛州的模型人口预测中,双指数平滑法的效果比ARIMA方法要低4.00%。这些发现有助于研究人员和政府机构选择合适的住房需求预测模型。

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