Volatility processes and volatility forecast with long memory
- 1 February 2004
- journal article
- Published by Taylor & Francis in Quantitative Finance
- Vol. 4 (1) , 70-86
- https://doi.org/10.1088/1469-7688/4/1/007
Abstract
We introduce a new family of processes that include the long memory (LM) (power law) in the volatility correlation. This is achieved by measuring the historical volatilities on a set of increasing time horizons and by computing the resulting effective volatility by a sum with power law weights. The processes have two parameters (linear processes) or four parameters (affine processes). In the limit where only one component is included, the processes are equivalent to GARCH(1, 1) and I-GARCH(1). Volatility forecast is discussed in the context of processes with quadratic equations, in particular as a means to estimate process parameters. Using hourly data, the empirical properties of the new processes are compared to existing processes (GARCH, I-GARCH, FIGARCH,…), in particular log-likelihood estimates and volatility forecast errors. This study covers time horizons ranging from 1 h to 1 month. We also study the variation of the estimated parameters with respect to changing sample by introducing a na...Keywords
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