The Cogarch: A Review, with News on Option Pricing and Statistical Inference

30 Pages Posted: 19 Jan 2010

See all articles by C. Klüppelberg

C. Klüppelberg

Technische Universität München (TUM)

Ross Maller

Australian National University (ANU) - School of Finance and Applied Statistics

Alexander Szimayer

University of Hamburg - Faculty of Economics and Business Administration

Date Written: January 18, 2010

Abstract

Continuous time models have been elevated to great importance in the modelling of time series data, in response to the successful options pricing model of Black and Scholes (1973), among other things. In 2004, Kluppelberg, Lindner, and Maller introduced the “COGARCH” model as a continuous-time analogue to the enormously influential and successful discrete time GARCH stochastic volatility model of Engle and Bollerslev. Like the GARCH model, the COGARCH is based on a single source of random variability, in this case, on a single background driving Levy process.

Since its inception, the original COGARCH model has been studied intensively and generalised and extended in various ways. In the present paper we formulate the model using stochastic differential equations and review some of its important properties as well as some recent developments, including some statistical issues. As a new contribution we present a COGARCH option pricing model including the possibility of default, in which the underlying stock price process is taken as a stochastic exponential of a COGARCH model with drift. We give a preliminary analysis of this model in its risk-neutral dynamics, and as a prominent example, compute European option prices in the Variance-Gamma COGARCH model.

For practical implementation, we must discretise the continuous-time COGARCH onto a discrete grid over a finite time interval. We go on to review ways of doing this by means of various approximation schemes, in particular, via a “first jump” approximation to the underlying Levy process, which preserves features of the process important for optimal stopping problems. Some other applications of the technology, especially, to the modelling of irregularly spaced time series data, are discussed too.

Keywords: Continuous-time GARCH model, Levy process, option pricing, stochastic volatility, statistics for stochastic processes, functional limit theorems

JEL Classification: G13

Suggested Citation

Kluppelberg, Claudia and Maller, Ross and Szimayer, Alexander, The Cogarch: A Review, with News on Option Pricing and Statistical Inference (January 18, 2010). Available at SSRN: https://ssrn.com/abstract=1538115 or http://dx.doi.org/10.2139/ssrn.1538115

Claudia Kluppelberg (Contact Author)

Technische Universität München (TUM) ( email )

Center for Mathematical Sciences
D-80290 Munich
Germany

Ross Maller

Australian National University (ANU) - School of Finance and Applied Statistics ( email )

Canberra, Australian Capital Territory 0200
Australia

Alexander Szimayer

University of Hamburg - Faculty of Economics and Business Administration ( email )

Von-Melle-Park 5
Hamburg, 20146
Germany