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Modeling and Forecasting Daily Hotel Demand: A Comparison Based on SARIMAX, Neural Networks, and GARCH Models

机译:日常酒店需求建模和预测:基于Sarimax,神经网络和GARCH模型的比较

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Overnight forecasting is a crucial challenge for revenue managers because of the uncertainty associated between demand and supply. However, there is limited research that focuses on predicting daily hotel demand. Hence, this paper evaluates various models’ of traditional time series forecasting performances for daily demand at multiple horizons. The models include the seasonal na?ve, Holt–Winters (HW) triple exponential smoothing, an autoregressive integrated moving average (ARIMA), a seasonal autoregressive integrated moving average (SARIMAX) with exogenous variables, multilayer perceptron (MLP) artificial neural networks model (ANNs), an sGARCH, and GJR-GARCH models. The dataset of this study contains daily demand observations from a hotel in a US metropolitan city from 2015 to 2019 and a set of exogenous social and environmental features such as temperature, holidays, and hotel competitive set ranking. Experimental results indicated that under the MAPE accuracy measure: (i) the SARIMAX model with external regressors outperformed the ANN-MLP model with similar external regressors and the other models, in every one horizon except one out of seven forecast horizons; (ii) the sGARCH(4, 2) and GJR-GARCH(4, 2) shows a superior predictive accuracy at all horizons. The results performance is evaluated by conducting pairwise comparisons between the different model’s distribution of forecasts using Diebold–Mariano and Harvey–Leybourne–Newbold tests. The results are significant for revenue managers because they provide valuable insights into the exogenous variables that impact accurate daily demand forecasting.
机译:过夜预测是由于需求与供应之间的不确定性,对收入管理人员来说是一个至关重要的挑战。然而,研究有限的研究侧重于预测日常酒店需求。因此,本文评估了多种视野中日常需求的传统时间序列预测性能的各种模型。该模型包括季节性Na'Ve,Holt-Winters(HW)三重指数平滑,自回归综合移动普通(Arima),季节性自回归综合移动平均线(Sarimax),具有外源变量,多层的感知(MLP)人工神经网络模型(ANNS),SGARCH和GJR-GARCH模型。本研究的数据集含有来自2015年至2019年美国大都市城市的酒店的日常需求观察,以及一系列外源性的社会和环境特征,如温度,假期和酒店竞争设定排名。实验结果表明,在MAPE精度测量下:(i)具有外部回归的Sarimax模型表现出具有相似外部回报和其他模型的ANN-MLP模型,除了七个预测视野之外的一个地平线。 (ii)SGARCH(4,2)和GJR-GARCH(4,2)在所有视野中显示出优异的预测精度。通过使用Diebold-Mariano和Harvey-Leybourne-Newbold测试的不同模型分布之间进行对比较来评估结果性能。结果对于收入管理人员来说是重要的,因为它们为影响准确的日常需求预测的外源变量提供有价值的见解。

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