首页> 外文期刊>Applied Soft Computing >Macroeconomic indicators alone can predict the monthly closing price of major US indices: Insights from artificial intelligence, time-series analysis and hybrid models
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Macroeconomic indicators alone can predict the monthly closing price of major US indices: Insights from artificial intelligence, time-series analysis and hybrid models

机译:单独的宏观经济指标可以预测主要美国指数的月收盘价:人工智能,时间序列分析和混合模型的见解

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This paper proposes a two-stage approach that can be used to investigate whether the information hidden in macroeconomic variables (alone) can be used to accurately predict the one-month ahead price for major U.S stock and sector indices. Stage 1 is constructed to evaluate the hypothesis that the price for different indices is driven by different economic indicators. It consists of three phases. In phase I, the data is automatically acquired using freely available APIs (application programming interfaces) and prepared for analysis. Phase II reduces the set of potential predictors without the loss of information through several variable selection methods. The third phase employs four ensemble models and three time-series models for prediction. The prediction performance of the seven models are compared using the Mean Absolute Percent Error (and two additional metrics). If the hypothesis were to be true, one expects that the performance of the ensemble models to outperform the time-series models since the information in the economy is more important than the information in previous prices. In Stage 2, a hybrid approach of the recurring neural network used for time-series prediction (i.e., the LSTM) and the ensemble models is constructed to examine the secondary hypothesis that the residuals from the time-series models are not random and can be explained by the macroeconomic indicators. To test the two hypotheses, the monthly closing prices for 13 U.S. stock and sector indices and the corresponding values for 23 macroeconomic indicators were collected from 01/1992-10/2016. Based on the case study, the four ensembles prediction performance were superior to that of the three time-series models. The MAPE of the best model for a given index was 1.87%. The Stage 2 results also show that the three evaluation metrics (RMSE, MAPE and MAE) can be typically improved by 25-50% by incorporating the information hidden in the macroeconomic indicators (through the ensemble approach). Thus, this paper shows that, for the analysis period and the indices studied, the macro-economic indicators are leading predictors of the price of 13 U.S. sector indices. (c) 2018 Elsevier B.V. All rights reserved.
机译:本文提出了一种两级方法,可用于调查隐藏在宏观经济变量(单独)中隐藏的信息,以便准确地预测主要U.S股票和部门指数的一个月前提。构建阶段1以评估不同指标的价格由不同的经济指标驱动的假设。它由三个阶段组成。在I阶段I中,使用可自由的API(应用程序编程接口)自动获取数据并准备分析。阶段II减少了通过多个可变选择方法丢失信息的潜在预测器集。第三阶段采用四个集合模型和三个时间序列模型进行预测。使用平均绝对百分比误差(和两个附加度量)进行比较七种模型的预测性能。如果假设是真的,人们希望集合模型的性能以优于时间序列模型,因为经济中的信息比以前价格中的信息更重要。在阶段2中,构造了用于时间序列预测(即,LSTM)和集合模型的重复神经网络的混合方法以检查次要假设,即时间序列模型的残差不是随机的,并且可以是由宏观经济指标解释。为了测试两个假设,从01 / 1992-10 / 2016收集了13美元股票和部门指数的月收盘价和23种宏观经济指标的相应价值。基于案例研究,四个集合预测性能优于三个时间序列模型。给定指数的最佳模型的MAPE是& 1.87%。第2阶段结果还表明,通过结合隐藏在宏观经济指标(通过集合方法)中的信息,可以通常通过25-50%提高三个评估度量(RMSE,MAPE和MAE)。因此,本文表明,对于所研究的分析期和索引,宏观经济指标是13美元划分的价格的推导预测因素。 (c)2018 Elsevier B.v.保留所有权利。

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