计量经济学
波动性(金融)
估计员
普通最小二乘法
经济
已实现方差
统计
随机波动
数学
作者
Razvan Pascalau,Ryan Poirier
出处
期刊:Journal of Financial Econometrics
[Oxford University Press]
日期:2021-12-11
卷期号:21 (4): 1064-1098
被引量:9
标识
DOI:10.1093/jjfinec/nbab028
摘要
Abstract Assuming N available calendar days, each with M intraday returns, the realized volatility literature suggests creating N end-of-day estimators by summing the M squared returns from each particular date. Instead of this “Calendar” [realized variance (RV)] approach, we propose a “Rolling” [rolling RV (RRV)] approach that simply sums trailing M returns at each timestamp, regardless if all M returns belong to the same calendar date. When estimating an out-of-sample 1-day realized volatility model, the former results in an ordinary least squares (OLS) regression with N−1 datapoints while the latter incorporates M(N−2)+1 datapoints, effectively lowering the standard errors, and potentially resulting in more accurate forecasts. We compare both models for the S&P 500 and 26 Dow Jones Industrial Average stocks; our results generally suggest that the Rolling approach yields both statistically and economically significant superior out-of-sample performance over the traditional Calendar approach.
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