Estimating long memory in volatility

被引:70
作者
Hurvich, CM [1 ]
Moulines, E [1 ]
Soulier, P [1 ]
机构
[1] NYU, Leonard N Stern Sch Business, Stat Grp, New York, NY 10012 USA
关键词
LMSV; FIEGARCH; local whittle estimator; semiparametric estimation;
D O I
10.1111/j.1468-0262.2005.00616.x
中图分类号
F [经济];
学科分类号
02 ;
摘要
We consider semiparametric estimation of the memory parameter in a model that includes as special cases both long-memory stochastic volatility and fractionally integrated exponential GARCH (FIEGARCH) models. Under our general model the logarithms of the squared returns can be decomposed into the sum of a long-memory signal and a white noise. We consider periodogram-based estimators using a local Whittle criterion function. We allow the optional inclusion of an additional term to account for possible correlation between the signal and noise processes, as would occur in the FIEGARCH model. We also allow for potential nonstationarity in volatility by allowing the signal process to have a memory parameter d* >= 1/2. We show that the local Whittle estimator is consistent for d* E (0, 1). We also show that the local Whittle estimator is asymptotically normal for d* is an element of (0, 3/4) and essentially recovers the optimal serniparametric rate of convergence for this problem. In particular, if the spectral density of the short-memory component of the signal is sufficiently smooth, a convergence rate of n(2/5-delta) for d* is an element of (0, 3/4) can be attained, where n is the sample size and delta > 0 is arbitrarily small. This represents a strong improvement over the performance of existing semiparametric estimators of persistence in volatility. We also prove that the standard Gaussian semiparametrie estimator is asymptotically normal if d* = 0. This yields a test for long memory in volatility.
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页码:1283 / 1328
页数:46
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