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Can oil prices help predict US stock market returns? Evidence using a dynamic model averaging (DMA) approach

机译:油价能否帮助预测美国股市的回报?使用动态模型平均(DMA)方法的证据

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摘要

Crude oil price behaviour has fluctuated wildly since 1973 which has a major impact on key macroeconomic variables. Although the relationship between stock market returns and oil price changes has been scrutinized excessively in the literature, the possibility of predicting future stock market returns using oil prices has attracted less attention. This paper investigates the ability of oil prices to predict S&P 500 price index returns with the use of other macroeconomic and financial variables. Including all the potential variables in a forecasting model may result in an over-fitted model. So instead, dynamic model averaging (DMA) and dynamic model selection (DMS) are applied to utilize their ability of allowing the best forecasting model to change over time while parameters are also allowed to change. The empirical evidence shows that applying the DMA/DMS approach leads to significant improvements in forecasting performance in comparison to other forecasting methodologies and the performance of these models are better when oil prices are included within predictors.
机译:自1973年以来,原油价格行为一直在剧烈波动,这对关键的宏观经济变量产生了重大影响。尽管在文献中对股票市场收益与油价变化之间的关系进行了详尽的研究,但使用油价预测未来股票市场收益的可能性却受到了较少的关注。本文研究了石油价格使用其他宏观经济和金融变量来预测标准普尔500指数价格指数回报的能力。在预测模型中包含所有潜在变量可能会导致模型过拟合。因此,取而代之的是,使用动态模型平均(DMA)和动态模型选择(DMS)来利用它们的能力,即允许最佳预测模型随时间变化,同时还允许参数变化。经验证据表明,与其他预测方法相比,采用DMA / DMS方法可显着改善预测性能,并且当将油价纳入预测变量时,这些模型的性能会更好。

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