Option models needs to be recalibrated as new data becomes available. The updated model parameters will depend on previous parameters and new data, making adaptive sequential calibration a suitable choice. We introduce a method for optimally tuning the parameter adaptivity when non-linear filters are used for calibration, as well as extending the dynamics of the parameters. The adaptivity is optimized by defining a statistical model, including both the option models and the adaptivity parameters. It turns out the corresponding (log-)likelihood function can be optimized through the EM algorithm, which ensures that the optimization is robust. We evaluate the method on simulated data and S&P 500 index options, seeing that we can track variatio...
In this paper we propose a general framework to deal with model approximation and analysis. We prese...
International audienceIn this paper, we propose a new approach for the exploration of the parameter ...
<p>(A–C) show sample adaptation profiles of the model parameters <b><i>ψ</i></b><sub><i>t</i>|<i>t</...
Option models needs to be recalibrated as new data becomes available. The updated model parameters w...
Abstract Robust calibration of option valuation models to quoted option prices is nontrivial, but as...
In geoscience and other fields, researchers use models as a simplified representation of reality. Th...
Simulation models of critical systems often have parameters that need to be calibrated using observe...
Abstract In spite of the popularity of model calibration in …nance, empirical researchers have put m...
All existing stochastic optimisers such as Evolutionary Algorithms require parameterisation which ha...
Estimating model parameters is a crucial step in mathematical modelling and typically involves minim...
This paper presents the construction of a particle filter, which incorporates elements inspired by g...
International audienceThis paper discusses the problem of adaptive estimation Of a univariate object...
An optimal adaptive design for test-item calibration based on Bayesian optimality criteria is presen...
Estimating model parameters is a crucial step in mathematical modelling and typically involves minim...
Iterative real-time optimization schemes that employ modifier adaptation add bias and gradient corre...
In this paper we propose a general framework to deal with model approximation and analysis. We prese...
International audienceIn this paper, we propose a new approach for the exploration of the parameter ...
<p>(A–C) show sample adaptation profiles of the model parameters <b><i>ψ</i></b><sub><i>t</i>|<i>t</...
Option models needs to be recalibrated as new data becomes available. The updated model parameters w...
Abstract Robust calibration of option valuation models to quoted option prices is nontrivial, but as...
In geoscience and other fields, researchers use models as a simplified representation of reality. Th...
Simulation models of critical systems often have parameters that need to be calibrated using observe...
Abstract In spite of the popularity of model calibration in …nance, empirical researchers have put m...
All existing stochastic optimisers such as Evolutionary Algorithms require parameterisation which ha...
Estimating model parameters is a crucial step in mathematical modelling and typically involves minim...
This paper presents the construction of a particle filter, which incorporates elements inspired by g...
International audienceThis paper discusses the problem of adaptive estimation Of a univariate object...
An optimal adaptive design for test-item calibration based on Bayesian optimality criteria is presen...
Estimating model parameters is a crucial step in mathematical modelling and typically involves minim...
Iterative real-time optimization schemes that employ modifier adaptation add bias and gradient corre...
In this paper we propose a general framework to deal with model approximation and analysis. We prese...
International audienceIn this paper, we propose a new approach for the exploration of the parameter ...
<p>(A–C) show sample adaptation profiles of the model parameters <b><i>ψ</i></b><sub><i>t</i>|<i>t</...