Predictive Regressions for Aggregate Stock Market Volatility with Machine Learning

Juan D. Díaz, Erwin Hansen, Gabriel Cabrera
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Abstract

We investigate whether machine learning techniques and a large set of financial and macroeconomic variables can be used to predict future S&P realized volatility. We evaluate the aggregate volatility predictions of regularization methods (Ridge, Lasso, and Elastic Net), tree-based methods (Random forest and Gradient boosting), and forecast combination methods. We find that the machine learning algorithms outperform autoregressive benchmark models, both statistically and economically, and that the tree-based methods perform the best. In addition to its past realizations, our analysis reveals that the main drivers of aggregate volatility are several financial and macroeconomic uncertainty proxies.
基于机器学习的股票市场总波动预测回归
我们研究机器学习技术和大量金融和宏观经济变量是否可用于预测未来标普实现波动率。我们评估了正则化方法(Ridge、Lasso和Elastic Net)、基于树的方法(随机森林和梯度增强)和预测组合方法的总波动率预测。我们发现机器学习算法在统计和经济上都优于自回归基准模型,并且基于树的方法表现最好。除了其过去的实现,我们的分析表明,总波动的主要驱动因素是几个金融和宏观经济不确定性代理。
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