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A Multiplicative Seasonal ARIMA/GARCH Model in EVN Traffic Prediction 被引量:2

A Multiplicative Seasonal ARIMA/GARCH Model in EVN Traffic Prediction
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摘要 This paper highlights the statistical procedure used in developing models that have the ability of capturing and forecasting the traffic of mobile communication network operating in Vietnam. To build such models, we follow Box-Jenkins method to construct a multiplicative seasonal ARIMA model to represent the mean component using the past values of traffic, then incorporate a GARCH model to represent its volatility. The traffic is collected from EVN Telecom mobile communication network. Diagnostic tests and examination of forecast accuracy measures indicate that the multiplicative seasonal ARIMA/GARCH model, i.e. ARIMA (1, 0, 1) × (0, 1, 1)24/GARCH (1, 1) shows a good estimation when dealing with volatility clustering in the data series. This model can be considered to be a flexible model to capture well the characteristics of EVN traffic series and give reasonable forecasting results. Moreover, in such situations that the volatility is not necessary to be taken into account, i.e. short-term prediction, the multiplicative seasonal ARIMA/GARCH model still acts well with the GARCH parameters adjusted to GARCH (0, 0). This paper highlights the statistical procedure used in developing models that have the ability of capturing and forecasting the traffic of mobile communication network operating in Vietnam. To build such models, we follow Box-Jenkins method to construct a multiplicative seasonal ARIMA model to represent the mean component using the past values of traffic, then incorporate a GARCH model to represent its volatility. The traffic is collected from EVN Telecom mobile communication network. Diagnostic tests and examination of forecast accuracy measures indicate that the multiplicative seasonal ARIMA/GARCH model, i.e. ARIMA (1, 0, 1) × (0, 1, 1)24/GARCH (1, 1) shows a good estimation when dealing with volatility clustering in the data series. This model can be considered to be a flexible model to capture well the characteristics of EVN traffic series and give reasonable forecasting results. Moreover, in such situations that the volatility is not necessary to be taken into account, i.e. short-term prediction, the multiplicative seasonal ARIMA/GARCH model still acts well with the GARCH parameters adjusted to GARCH (0, 0).
出处 《International Journal of Communications, Network and System Sciences》 2015年第4期43-49,共7页 通讯、网络与系统学国际期刊(英文)
关键词 TRAFFIC Prediction ARIMA GARCH MULTIPLICATIVE SEASONAL ARIMA/GARCH EVIEWS Traffic Prediction ARIMA GARCH Multiplicative Seasonal ARIMA/GARCH EViews
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  • 1Fang-Mei Tseng,Gwo-Hshiung Tzeng,Hsiao-Cheng Yu,Benjamin J.C. Yuan.Fuzzy ARIMA model for forecasting the foreign exchange market[J].Fuzzy Sets and Systems.2001(1)
  • 2G.Peter Zhang.Time series forecasting using a hybrid ARIMA and neural network model[J]. Neurocomputing . 2002
  • 3Hillmer,S. C.,Tiao,G. C.An ARIMA Model-Based Approach to Seasonal Adjustment. Journal of the American Statistical Association . 1982
  • 4Shukur O B,Lee M H.Daily wind speed forecasting through hybrid KF-ANN model based on ARIMA. Renewable Energy . 2015
  • 5Yuan L.Stock Index Forecasting Based on Hybrid ARIMA and LSSVM Methodology. 2015International Conference on Education,Management,Information and Medicine . 2015
  • 6He C,Xing J C,Zhang X.A New Method for Modal Parameter Identification Based on Natural Excitation Technique and ARMA Model in Ambient Excitation. Advanced Materials Research . 2015
  • 7吴华意,黄蕊,游兰,向隆刚.出租车轨迹数据挖掘进展[J].测绘学报,2019,48(11):1341-1356. 被引量:55

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