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Quasi-Monte Carlo Methods in Finance
With Application to Optimal Asset Allocation
Taschenbuch von Mario Rometsch
Sprache: Englisch

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Beschreibung
Portfolio optimization is a widely studied problem in finance dating back to the work of Merton from the 1960s. While many approaches rely on dynamic programming, some recent contributions use
martingale techniques to determine the optimal portfolio allocation.
Using the latter approach, we follow a journal article from 2003 and show how optimal portfolio weights can be represented in terms of conditional expectations of the state variables and their Malliavin derivatives.
In contrast to other approaches, where Monte Carlo methods are used to compute the weights, here the simulation is carried out using Quasi-Monte Carlo methods in order to improve the efficiency. Despite some previous work on Quasi-Monte Carlo simulation of stochastic differential equations, we find them to dominate plain Monte Carlo methods. However, the theoretical optimal order of convergence is not achieved.
With the help of some recent results concerning Monte-Carlo error estimation and backed by some computer experiments on a simple model with explicit solution, we provide a first guess, what could be a way around this difficulties.
The book is organized as follows. In the first chapter we provide some general introduction to Quasi-Monte Carlo methods and show at hand of a simple example how these methods can be used to accelerate the plain Monte Carlo sampling approach. In the second part we provide a thourough introduction to Malliavin Calculus and derive some important calculation rules that will be necessary in the third chapter. Right there we will focus on portfolio optimization and and follow a recent journal article of Detemple, Garcia and Rindisbacher from there rather general market model to the optimal portfolio formula. Finally, in the last part we will implement this optimal portfolio by means of a simple model with explicit solution where we find that also their the Quasi-Monte Carlo approach dominates the Monte Carlo method in terms of efficiency and accuracy.
Portfolio optimization is a widely studied problem in finance dating back to the work of Merton from the 1960s. While many approaches rely on dynamic programming, some recent contributions use
martingale techniques to determine the optimal portfolio allocation.
Using the latter approach, we follow a journal article from 2003 and show how optimal portfolio weights can be represented in terms of conditional expectations of the state variables and their Malliavin derivatives.
In contrast to other approaches, where Monte Carlo methods are used to compute the weights, here the simulation is carried out using Quasi-Monte Carlo methods in order to improve the efficiency. Despite some previous work on Quasi-Monte Carlo simulation of stochastic differential equations, we find them to dominate plain Monte Carlo methods. However, the theoretical optimal order of convergence is not achieved.
With the help of some recent results concerning Monte-Carlo error estimation and backed by some computer experiments on a simple model with explicit solution, we provide a first guess, what could be a way around this difficulties.
The book is organized as follows. In the first chapter we provide some general introduction to Quasi-Monte Carlo methods and show at hand of a simple example how these methods can be used to accelerate the plain Monte Carlo sampling approach. In the second part we provide a thourough introduction to Malliavin Calculus and derive some important calculation rules that will be necessary in the third chapter. Right there we will focus on portfolio optimization and and follow a recent journal article of Detemple, Garcia and Rindisbacher from there rather general market model to the optimal portfolio formula. Finally, in the last part we will implement this optimal portfolio by means of a simple model with explicit solution where we find that also their the Quasi-Monte Carlo approach dominates the Monte Carlo method in terms of efficiency and accuracy.
Über den Autor
Born in 1981, Mario Rometsch studied Mathematics and Economics at ulm university. Being both attracted to Financial mathematics and Numerical Analysis / Computer Science, he chose to write his diploma thesis in Computational Finance, at the point of intersection of both disciplines. Right now, Mario Rometsch is a fellow at the Research Training Group 1100 at ulm university, where he is pursuing his PhD studies with Adaptive Wavelet Methods.
Details
Erscheinungsjahr: 2008
Genre: Informatik, Mathematik, Medizin, Naturwissenschaften, Technik
Rubrik: Naturwissenschaften & Technik
Medium: Taschenbuch
Inhalt: 148 S.
16 farbige Illustr.
ISBN-13: 9783836666640
ISBN-10: 3836666642
Sprache: Englisch
Einband: Kartoniert / Broschiert
Autor: Rometsch, Mario
Hersteller: Diplomica Verlag
Verantwortliche Person für die EU: Diplomica Verlag, Hermannstal 119k, D-22119 Hamburg, info@bedey-media.de
Maße: 270 x 190 x 10 mm
Von/Mit: Mario Rometsch
Erscheinungsdatum: 23.10.2008
Gewicht: 0,371 kg
Artikel-ID: 101714435
Über den Autor
Born in 1981, Mario Rometsch studied Mathematics and Economics at ulm university. Being both attracted to Financial mathematics and Numerical Analysis / Computer Science, he chose to write his diploma thesis in Computational Finance, at the point of intersection of both disciplines. Right now, Mario Rometsch is a fellow at the Research Training Group 1100 at ulm university, where he is pursuing his PhD studies with Adaptive Wavelet Methods.
Details
Erscheinungsjahr: 2008
Genre: Informatik, Mathematik, Medizin, Naturwissenschaften, Technik
Rubrik: Naturwissenschaften & Technik
Medium: Taschenbuch
Inhalt: 148 S.
16 farbige Illustr.
ISBN-13: 9783836666640
ISBN-10: 3836666642
Sprache: Englisch
Einband: Kartoniert / Broschiert
Autor: Rometsch, Mario
Hersteller: Diplomica Verlag
Verantwortliche Person für die EU: Diplomica Verlag, Hermannstal 119k, D-22119 Hamburg, info@bedey-media.de
Maße: 270 x 190 x 10 mm
Von/Mit: Mario Rometsch
Erscheinungsdatum: 23.10.2008
Gewicht: 0,371 kg
Artikel-ID: 101714435
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