Evaluating moving average options is a tough computational challenge for the energy and commodity market as the payoff of the option depends on the prices of a certain underlying observed on a mov- ing window so, when a long window is considered, the pricing problem becomes high dimensional. We present an efficient method for pricing Bermudan style moving average options, based on Gaussian Pro- cess Regression and Gauss-Hermite quadrature, thus named GPR-GHQ. Specifically, the proposed algo- rithm proceeds backward in time and, at each time-step, the continuation value is computed only in a few points by using Gauss-Hermite quadrature, and then it is learned through Gaussian Process Regres- sion. We test the proposed approach in the Black-S...
Traditional option pricing methods like Monte Carlo simulation can be time consuming when pricing an...
The pricing of most contingent claims is continuously monitored the movement of the underlying asset...
In this dissertation, we discuss how to price American-style options. Our aim is to study and improv...
International audienceEvaluating moving average options is a tough computational challenge for the e...
International audienceIn this paper we propose two efficient techniques which allow one t...
This dissertation explores the problem of pricing American options in high dimensions using machine ...
In this thesis, we show how to deploy machine learning techniques such as Gaussian process regressio...
International audienceIn this paper we propose an efficient method to compute the price of multi-ass...
In this paper, we propose an efficient method for computing the price of multi-asset American option...
We propose a numerical method for valuing American options in general and for the GARCH option prici...
Abstract: We provide a characterization of the Gaussian processes with stationary increments that ca...
DoctorAccording to advances in information technology, many machine learning techniques have been de...
In this thesis, we propose the Markov tree option pricing model and subject it to large-scale empiri...
AbstractWe provide a characterization of the Gaussian processes with stationary increments that can ...
Traditional option pricing methods like Monte Carlo simulation can be time consuming when pricing an...
The pricing of most contingent claims is continuously monitored the movement of the underlying asset...
In this dissertation, we discuss how to price American-style options. Our aim is to study and improv...
International audienceEvaluating moving average options is a tough computational challenge for the e...
International audienceIn this paper we propose two efficient techniques which allow one t...
This dissertation explores the problem of pricing American options in high dimensions using machine ...
In this thesis, we show how to deploy machine learning techniques such as Gaussian process regressio...
International audienceIn this paper we propose an efficient method to compute the price of multi-ass...
In this paper, we propose an efficient method for computing the price of multi-asset American option...
We propose a numerical method for valuing American options in general and for the GARCH option prici...
Abstract: We provide a characterization of the Gaussian processes with stationary increments that ca...
DoctorAccording to advances in information technology, many machine learning techniques have been de...
In this thesis, we propose the Markov tree option pricing model and subject it to large-scale empiri...
AbstractWe provide a characterization of the Gaussian processes with stationary increments that can ...
Traditional option pricing methods like Monte Carlo simulation can be time consuming when pricing an...
The pricing of most contingent claims is continuously monitored the movement of the underlying asset...
In this dissertation, we discuss how to price American-style options. Our aim is to study and improv...