波动性(金融)
计量经济学
超参数
已实现方差
自回归模型
差异(会计)
计算机科学
正规化(语言学)
回归
人工神经网络
机器学习
人工智能
统计
经济
数学
会计
作者
Kim Christensen,Mathias Siggaard,Bezirgen Veliyev
出处
期刊:Journal of Financial Econometrics
[Oxford University Press]
日期:2022-06-21
卷期号:21 (5): 1680-1727
被引量:85
标识
DOI:10.1093/jjfinec/nbac020
摘要
Abstract We inspect how accurate machine learning (ML) is at forecasting realized variance of the Dow Jones Industrial Average index constituents. We compare several ML algorithms, including regularization, regression trees, and neural networks, to multiple heterogeneous autoregressive (HAR) models. ML is implemented with minimal hyperparameter tuning. In spite of this, ML is competitive and beats the HAR lineage, even when the only predictors are the daily, weekly, and monthly lags of realized variance. The forecast gains are more pronounced at longer horizons. We attribute this to higher persistence in the ML models, which helps to approximate the long memory of realized variance. ML also excels at locating incremental information about future volatility from additional predictors. Lastly, we propose an ML measure of variable importance based on accumulated local effects. This shows that while there is agreement about the most important predictors, there is disagreement on their ranking, helping to reconcile our results.
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