波动性预测与机器学习和日内共性

IF 1.8 3区 经济学 Q2 BUSINESS, FINANCE Journal of Financial Econometrics Pub Date : 2023-03-20 DOI:10.1093/jjfinec/nbad005
Chao Zhang, Yihuang Zhang, Mihai Cucuringu, Zhongmin Qian
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引用次数: 0

摘要

我们将机器学习模型应用于预测盘中实现波动率(RV),方法是通过将股票数据汇集在一起,利用盘中波动率的共性,并结合市场波动率的代理。由于神经网络能够发现和模拟变量之间复杂的潜在相互作用,因此在性能方面主导线性回归和基于树的模型。当我们将训练好的模型应用于未包含在训练集中的新股票时,我们的发现仍然稳健,从而为股票之间的普遍波动机制提供了新的经验证据。最后,我们提出了一种新的方法来预测1天前的rv,使用过去的日内rv作为预测因子,并强调了有助于预测机制的有趣的时间效应。结果表明,与仅依赖过去每日rv的一组强大的传统基线相比,所提出的方法产生了更好的样本外预测。
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Volatility Forecasting with Machine Learning and Intraday Commonality
We apply machine learning models to forecast intraday realized volatility (RV), by exploiting commonality in intraday volatility via pooling stock data together, and by incorporating a proxy for the market volatility. Neural networks dominate linear regressions and tree-based models in terms of performance, due to their ability to uncover and model complex latent interactions among variables. Our findings remain robust when we apply trained models to new stocks that have not been included in the training set, thus providing new empirical evidence for a universal volatility mechanism among stocks. Finally, we propose a new approach to forecasting 1-day-ahead RVs using past intraday RVs as predictors, and highlight interesting time-of-day effects that aid the forecasting mechanism. The results demonstrate that the proposed methodology yields superior out-of-sample forecasts over a strong set of traditional baselines that only rely on past daily RVs.
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来源期刊
CiteScore
5.60
自引率
8.00%
发文量
39
期刊介绍: "The Journal of Financial Econometrics is well situated to become the premier journal in its field. It has started with an excellent first year and I expect many more."
期刊最新文献
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