Impact of Structural Break Location on Forecasting Accuracy: Traditional Methods Versus Artificial Neural Network

Daud Aser, E. Firuzan
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Abstract

Since forecasting the future values is fundamental for researchers, investors, practitioners, etc., obtaining accurate predictions is critical in time series analysis. The accuracy is reliant on good modeling and good quality data. The latter is affected by unusual observations, changes over time, missing data, and structural breaks among others. Economic crises are the major cause of data instability and therefore, this paper focuses on how structural breaks in conditional heteroscedastic financial and macroeconomic data affect forecasting accuracy on short and long-term horizons. More specifically, we are interested in the impact of the location of the structural break and break size on the predictive performance of two linear (ARIMA and Exponential Smoothing) forecasting models and two nonlinear (ARIMA – ARCH and Artificial Neural Network) models. We conducted Monte Carlo simulations and showed that the forecasting accuracy decreases as the structural break location approaches the end of the sample. In addition, break size and length of the horizon significantly impact the forecasting accuracy. We also showed that ARIMA – ARCH model is the best performing in the absence of structural break while the artificial neural network model outperforms all the competing models in the presence of structural break, especially in large break sizes and long horizons. Last, we applied the above techniques to forecasting daily close prices of Brent oil and Turkish Lira – USD exchange rates out–of–sample and similar results were found.
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结构断裂位置对预测精度的影响:传统方法与人工神经网络
由于预测未来价值是研究人员、投资者、从业者等的基础,因此在时间序列分析中获得准确的预测是至关重要的。准确性依赖于良好的建模和高质量的数据。后者受到异常观测、随时间变化、数据缺失和结构断裂等因素的影响。经济危机是数据不稳定的主要原因,因此,本文重点研究条件异方差金融和宏观经济数据的结构性断裂如何影响短期和长期预测的准确性。更具体地说,我们感兴趣的是结构断裂的位置和断裂大小对两个线性(ARIMA和指数平滑)预测模型和两个非线性(ARIMA - ARCH和人工神经网络)模型的预测性能的影响。我们进行了蒙特卡罗模拟,结果表明,随着结构断裂位置接近样本的末端,预测精度降低。此外,断裂大小和层位长度对预测精度有显著影响。我们还发现ARIMA - ARCH模型在没有结构断裂的情况下表现最好,而人工神经网络模型在存在结构断裂的情况下表现优于所有竞争模型,特别是在大断裂尺寸和长视野的情况下。最后,我们将上述技术应用于预测布伦特原油的每日收盘价和土耳其里拉-美元的样本外汇率,发现了类似的结果。
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