Title :
EEX base and peak load one-year forward contracts: Stochastic volatility
Author :
Solibakke, Per Bjarte
Author_Institution :
Molde Univ. Coll., Molde, Norway
Abstract :
The paper applies a Bayesian estimator adapting MCMC simulation methodologies to build a general scientific stochastic volatility (SV) model for the mean and latent volatility of the base and peak load EEX one-year forward electric power contracts. The main objective is to find appropriate descriptions emphasizing schemes for portfolio management, risk management and general derivative pricing purposes. Moreover, as forecasting under the MCMC framework can be done easily for both the mean and volatility, the model building approach can produce useful and superior volatility and correlation updating schemes. The stochastic volatility model is - on a parameterized statistical model for simulation purposes and the estimation uses the MCMC simulation techniques. The methodology helps to circumvent the computational curse of dimensionality and is therefore superior to conventional derivative-based hill climbing optimizers. Our results show that the general scientific methodology from the Bayesian model parameter estimation, adequately describes the European energy market´s financial contracts. The successful implementation to energy markets suggests not whether the methods can be used in financial market applications, but how efficient the methods can generally become.
Keywords :
Bayes methods; Markov processes; Monte Carlo methods; parameter estimation; power markets; risk management; Bayesian estimator; Bayesian model parameter estimation; European energy market; Markov chain Monte Carlo simulation; electric power contracts; financial market application; model building approach; parameterized statistical model; portfolio management; risk management; scientific stochastic volatility model; Bayesian methods; Computational modeling; Forward contracts; Optimization methods; Parameter estimation; Portfolios; Predictive models; Pricing; Risk management; Stochastic processes; Algorithms; Bayes procedures; Markov processes; Stochastic Processes;
Conference_Titel :
Energy Market, 2009. EEM 2009. 6th International Conference on the European
Conference_Location :
Leuven
Print_ISBN :
978-1-4244-4455-7
DOI :
10.1109/EEM.2009.5207165