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Two Different Points of View through Artificial Intelligence and Vector Autoregressive Models for Ex Post and Ex Ante Forecasting

机译:事后预测和事前预测的人工智能和向量自回归模型的两种不同观点

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摘要

The ANN method has been applied by means of multilayered feedforward neural networks (MLFNs) by using different macroeconomic variables such as the exchange rate of USD/TRY, gold prices, and the Borsa Istanbul (BIST) 100 index based on monthly data over the period of January 2000 and September 2014 for Turkey. Vector autoregressive (VAR) method has also been applied with the same variables for the same period of time. In this study, different from other studies conducted up to the present, ENCOG machine learning framework has been used along with JAVA programming language in order to constitute the ANN. The training of network has been done by resilient propagation method. The ex post and ex ante estimates obtained by the ANN method have been compared with the results obtained by the econometric forecasting method of VAR. Strikingly, our findings based on the ANN method reveal that there is a possibility of financial distress or a financial crisis in Turkey starting from October 2017. The results which were obtained with the method of VAR also support the results of ANN method. Additionally, our results indicate that the ANN approach has more superior prediction performance than the VAR method.
机译:ANN方法已通过多层前馈神经网络(MLFN)的应用,使用了不同的宏观经济变量,例如美元/土耳其里拉的汇率,黄金价格和伊斯坦布尔证券交易所(BIST)100指数(基于该时期的月度数据)分别为2000年1月和2014年9月。向量自回归(VAR)方法也已在相同的时间段内应用了相同的变量。在这项研究中,与迄今为止进行的其他研究不同,ENCOG机器学习框架已与JAVA编程语言一起使用,以构成ANN。网络的训练已经通过弹性传播方法完成。将通过ANN方法获得的事前和事前估计与通过VAR的计量经济学预测方法获得的结果进行了比较。令人惊讶的是,我们基于ANN方法的发现表明,从2017年10月开始,土耳其可能会出现财务困境或金融危机。使用VAR方法获得的结果也支持ANN方法的结果。此外,我们的结果表明,与VAR方法相比,ANN方法具有更好的预测性能。

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