International audienceWe propose a probabilistic approach for estimating parameters of an option pricing model from a set of observed option prices. Our approach is based on a stochastic optimization algorithm which generates a random sample from the set of global minima of the in-sample pricing error and allows for the existence of multiple global minima. Starting from an IID population of candidate solutions drawn from a prior distribution of the set of model parameters, the population of parameters is updated through cycles of independent random moves followed by "selection" according to pricing performance. We examine conditions under which such an evolving population converges to a sample of calibrated models. The heterogeneity of the ...
Abstract. Using market European option prices, a method for computing a smooth local volatility func...
To use a wider range of information available on the market, we propose a parameter estimation and o...
In this research we describe how forward-looking information on the statistical properties of an ass...
International audienceWe propose a probabilistic approach for estimating parameters of an option pri...
This paper presents a new algorithm to calibrate the option pricing model, i.e. the algorithm that r...
In this paper, we consider joint estimation of objective and risk-neutral parameters for stochastic ...
This paper examines a variety of methods for extracting implied probability distributions from optio...
This paper examines a variety of methods for extracting implied probability distributions from optio...
The paper presents a pricing rule for market models with stochastic volatility and with an uncertain...
The problem of option pricing is treated using the Stochastic Volatility (SV) model: the volatility ...
Abstract. Using market European option prices, a method for computing a smooth local volatility func...
Using market European option prices, a method for computing a smooth local volatility function in a...
95 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2006.The second part of this thesis...
Using market European option prices, a method for computing a {\em smooth} local volatility function...
2003We present a non-parametric method for calibrating jump-diffusion models to a set of observed op...
Abstract. Using market European option prices, a method for computing a smooth local volatility func...
To use a wider range of information available on the market, we propose a parameter estimation and o...
In this research we describe how forward-looking information on the statistical properties of an ass...
International audienceWe propose a probabilistic approach for estimating parameters of an option pri...
This paper presents a new algorithm to calibrate the option pricing model, i.e. the algorithm that r...
In this paper, we consider joint estimation of objective and risk-neutral parameters for stochastic ...
This paper examines a variety of methods for extracting implied probability distributions from optio...
This paper examines a variety of methods for extracting implied probability distributions from optio...
The paper presents a pricing rule for market models with stochastic volatility and with an uncertain...
The problem of option pricing is treated using the Stochastic Volatility (SV) model: the volatility ...
Abstract. Using market European option prices, a method for computing a smooth local volatility func...
Using market European option prices, a method for computing a smooth local volatility function in a...
95 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2006.The second part of this thesis...
Using market European option prices, a method for computing a {\em smooth} local volatility function...
2003We present a non-parametric method for calibrating jump-diffusion models to a set of observed op...
Abstract. Using market European option prices, a method for computing a smooth local volatility func...
To use a wider range of information available on the market, we propose a parameter estimation and o...
In this research we describe how forward-looking information on the statistical properties of an ass...