Taylor, S J (1999) Markov processes and the distribution of volatility : a comparison of discrete and continuous specifications. Philosophical Transactions A: Mathematical, Physical and Engineering Sciences, 357 (1758). pp. 2059-2070. ISSN 1364-503X
Full text not available from this repository.Abstract
Two mixtures of normal distributions, created by persistent changes in volatility, are compared as models for asset returns. A Markov chain with two states for volatility is contrasted with an autoregressive Gaussian process for the logarithm of volatility. The conditional variances of asset returns are shown to have a bimodal distribution for the former process when volatility is persistent that contrasts with a unimodal distribution for the latter process. A test procedure based upon this contrast shows that a log–normal distribution for sterling/dollar volatility is far more credible than only two volatility states.