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首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >Modeling and Prediction of the Volatility of the Freight Rate in the Roadway Freight Market of China
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Modeling and Prediction of the Volatility of the Freight Rate in the Roadway Freight Market of China

机译:中国巷道货运市场运输率波动的建模与预测

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摘要

The trucking sector is an essential part of the logistic system in China, carrying more than 80% of its goods. The complexity of the trucking market leads to tremendous uncertainty in the market volatility. Hence, in this highly competitive and vital market, trend forecasting is extremely difficult owing to the volatility of the freight rate. Consequently, there is interest in accurately forecasting the freight volatility for truck transportation. In this study, to represent the degree of variation of a freight rate series in the trucking sector over time, we first introduce truck rate volatility (TRV). This investigation utilizes the generalized autoregressive conditional heteroskedasticity (GARCH) family of methods to estimate the dynamic time-varying TRV using the real trucking industry transaction data obtained from an online freight exchange (OFEX) platform. It explores the ability of forecasting with and without reestimation at each step of the conventional GARCH models, a neural network exponential GARCH (NN-EGARCH) model, and a traditional forecasting technique, the autoregressive integrated moving average (ARIMA) approach. The empirical results from the southwest China trucking data indicate that the asymmetric GARCH-type models capture the characteristics of the TRV better than those with Gaussian distributions and that the leverage effects are observed in the TRV. Furthermore, the NN-EGARCH performs better in in-sample forecasting than other methods, whereas ARIMA performs similarly in out-of-sample TRV forecasting with reestimation. However, the Diebold–Mariano test indicates the better forecasting ability of ARIMA than the NN-EGARCH in the out-of-sample periods. The findings of this study can benefit truckers and shippers to capture the tendency change of the market to conduct their business plan, increase their look-to-buy rate, and avoid market risk.
机译:卡车运输部门是中国物流系统的重要组成部分,载有80%以上的商品。卡车运输市场的复杂性导致市场波动的不确定性。因此,在这个具有竞争力和重要的市场中,由于运费波动,趋势预测极为困难。因此,有兴趣准确地预测卡车运输的货运波动。在这项研究中,在推出卡车运输部门的货运速率系列变化程度,我们首先引入卡车速率波动(TRV)。本研究利用了广泛的自回归条件异质痉挛(GARCH)系列方法,用于使用从在线货运交换(OFEX)平台获得的真正的货运业务交易数据来估算动态时变TRV。它探讨了传统GARCH模型的每个步骤的预测和没有重新定位的能力,神经网络指数GARCH(NN-EGARCH)模型以及传统的预测技术,自回归综合移动平均(ARIMA)方法。中国西南货运数据的经验结果表明,不对称的加粗型模型比具有高斯分布的特点捕获TRV的特性,并且在TRV中观察到杠杆效果。此外,NN-eGARCH比其他方法在样本预测中表现更好,而ARIMA在尝试外的TRV预测与再现时类似地执行。然而,Diebold-Mariano测试表明Arima的预测能力比样品超时的NN-EGARCH更好。本研究的调查结果可以使卡车司机和托运人受益,以捕捉市场的趋势变化,以开展业务计划,增加他们的寻求率,避免市场风险。

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