套索HAR模型:基于模型选择的已实现波动率动态研究

Lassoing the HAR Model: A Model Selection Perspective on Realized Volatility Dynamics

Econometric Reviews · 2015
被引 131 · 同刊同年前 1%
人大 A-ABS 3

中文导读

研究了Lasso方法能否恢复HAR模型的滞后结构,发现真实数据中HAR模型结构存在断点,对其适用性提出质疑,但两者样本外表现相当。

Abstract

Realized volatility computed from high-frequency data is an important measure for many applications in finance, and its dynamics have been widely investigated. Recent notable advances that perform well include the heterogeneous autoregressive (HAR) model which can approximate long memory, is very parsimonious, is easy to estimate, and features good out-of-sample performance. We prove that the least absolute shrinkage and selection operator (Lasso) recovers the lags structure of the HAR model asymptotically if it is the true model, and we present Monte Carlo evidence in finite samples. The HAR model's lags structure is not fully in agreement with the one found using the Lasso on real data. Moreover, we provide empirical evidence that there are two clear breaks in structure for most of the assets we consider. These results bring into question the appropriateness of the HAR model for realized volatility. Finally, in an out-of-sample analysis, we show equal performance of the HAR model and the Lasso approach.

HAR模型Lasso已实现波动率滞后结构