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On conditional risk estimation considering model risk
Authors:Fedya Telmoudi  Mohamed EL Ghourabi  Mohamed Limam
Institution:1. LARODEC, University of Tunis, 41, Avenue de la Liberté, Cité Bouchoucha, Le Bardo 2000 Tunis, Tunisia;2. Department of Economics and Quantitative Methods, ESSECT, University of Tunis, 4, Rue Abou Zakaria Hafsi, 1089 Montfleury, Tunis, Tunisia;3. Department of Management Information Systems, Dhofar University, Salalah, Oman
Abstract:Usually, parametric procedures used for conditional variance modelling are associated with model risk. Model risk may affect the volatility and conditional value at risk estimation process either due to estimation or misspecification risks. Hence, non-parametric artificial intelligence models can be considered as alternative models given that they do not rely on an explicit form of the volatility. In this paper, we consider the least-squares support vector regression (LS-SVR), weighted LS-SVR and Fixed size LS-SVR models in order to handle the problem of conditional risk estimation taking into account issues of model risk. A simulation study and a real application show the performance of proposed volatility and VaR models.
Keywords:artificial intelligence models  conditional value at risk  LS-SVR  GARCH models  modelrisk  spareness
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