Check out Mark Jensen's new paper. Long memory is a key feature of realized high-frequency asset-return volatility, yet it remains poorly understood. Jensen's approach may help change that. Of particular interest are: (1) its ability to handle seamlessly d in [0, 1[, despite the fact that the unconditional variance is infinite for d in ].5, 1[, and (2) closely related, the important role played by wavelets.
Details:
Robust
estimation of nonstationary, fractionally integrated, autoregressive,
stochastic volatility
Date:
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2015-11-01
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By:
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Jensen, Mark J. (Federal Reserve Bank of
Atlanta)
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Empirical volatility studies have
discovered nonstationary, long-memory dynamics in the volatility of the stock
market and foreign exchange rates. This highly persistent, infinite
variance—but still mean reverting—behavior is commonly found with
nonparametric estimates of the fractional differencing parameter d, for
financial volatility. In this paper, a fully parametric Bayesian estimator,
robust to nonstationarity, is designed for the fractionally integrated,
autoregressive, stochastic volatility (SV-FIAR) model. Joint estimates of the
autoregressive and fractional differencing parameters of volatility are found
via a Bayesian, Markov chain Monte Carlo (MCMC) sampler. Like Jensen (2004),
this MCMC algorithm relies on the wavelet representation of the log-squared
return series. Unlike the Fourier transform, where a time series must be a
stationary process to have a spectral density function, wavelets can
represent both stationary and nonstationary pr! ocesses. As long as the
wavelet has a sufficient number of vanishing moments, this paper's MCMC
sampler will be robust to nonstationary volatility and capable of generating
the posterior distribution of the autoregressive and long-memory parameters
of the SV-FIAR model regardless of the value of d. Using simulated and
empirical stock market return data, we find our Bayesian estimator producing
reliable point estimates of the autoregressive and fractional differencing
parameters with reasonable Bayesian confidence intervals for either
stationary or nonstationary SV-FIAR models.
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Keywords:
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JEL:
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URL:
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