Computational Methods In Finance Related To Distributions With Known Marginals


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Handbook of Computational and Numerical Methods in Finance


Handbook of Computational and Numerical Methods in Finance

Author: Svetlozar T. Rachev

language: en

Publisher: Springer Science & Business Media

Release Date: 2011-06-28


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Numerical Methods in Finance have recently emerged as a new discipline at the intersection of probability theory, finance and numerical analysis. They bridge the gap between financial theory and computational practice and provide solutions to problems where analytical methods are often non-applicable. Numerical methods are more and more used in several topics of financial analy sis: computation of complex derivatives; market, credit and operational risk assess ment, asset liability management, optimal portfolio theory, financial econometrics and others. Although numerical methods in finance have been studied intensively in recent years, many theoretical and practical financial aspects have yet to be explored. This volume presents current research focusing on various numerical methods in finance. The contributions cover methodological issues. Genetic Algorithms, Neural Net works, Monte-Carlo methods, Finite Difference Methods, Stochastic Portfolio Opti mization as well as the application of other numerical methods in finance and risk management. As editor, I am grateful to the contributors for their fruitful collaboration. I would particularly like to thankStefan Trueck and Carlo Marinelli for the excellent editorial assistance received over the progress of this project. Thomas Plum did a splendid word-processingjob in preparing the manuscript. lowe much to George Anastassiou (ConsultantEditor, Birkhauser) and Ann Kostant Executive Editor, Mathematics and Physics, Birkhauser for their help and encouragement.

Numerical Methods and Optimization in Finance


Numerical Methods and Optimization in Finance

Author: Manfred Gilli

language: en

Publisher: Academic Press

Release Date: 2019-08-16


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Computationally-intensive tools play an increasingly important role in financial decisions. Many financial problems-ranging from asset allocation to risk management and from option pricing to model calibration-can be efficiently handled using modern computational techniques. Numerical Methods and Optimization in Finance presents such computational techniques, with an emphasis on simulation and optimization, particularly so-called heuristics. This book treats quantitative analysis as an essentially computational discipline in which applications are put into software form and tested empirically. This revised edition includes two new chapters, a self-contained tutorial on implementing and using heuristics, and an explanation of software used for testing portfolio-selection models. Postgraduate students, researchers in programs on quantitative and computational finance, and practitioners in banks and other financial companies can benefit from this second edition of Numerical Methods and Optimization in Finance.

Computational Methods in Finance Related to Distributions with Known Marginals


Computational Methods in Finance Related to Distributions with Known Marginals

Author: Amir Memartoluie

language: en

Publisher:

Release Date: 2017


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Model uncertainty and the dependence structures of various risk factors are important components of measuring and managing financial risk, such as market, credit and operational risks. In this thesis we provide a systematic investigation into these issues by studying their impacts on Credit Value Adjustment (CVA), Counterparty Credit Risk (CCR), and estimating Value-at-Risk for a portfolio of financial instruments. In particular we address the numerical issues of finding an unknown (worst-case) copula that ties marginal distributions of risk factors together given partial information about them.