Granularity theory with applications to finance and insurance
Author(s)
Bibliographic Information
Granularity theory with applications to finance and insurance
(Themes in modern econometrics)
Cambridge University Press, 2014
- : hardback
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Note
Includes bibliographical references and index
Description and Table of Contents
Description
The recent financial crisis has heightened the need for appropriate methodologies for managing and monitoring complex risks in financial markets. The measurement, management, and regulation of risks in portfolios composed of credits, credit derivatives, or life insurance contracts is difficult because of the nonlinearities of risk models, dependencies between individual risks, and the several thousands of contracts in large portfolios. The granularity principle was introduced in the Basel regulations for credit risk to solve these difficulties in computing capital reserves. In this book, authors Patrick Gagliardini and Christian Gourieroux provide the first comprehensive overview of the granularity theory and illustrate its usefulness for a variety of problems related to risk analysis, statistical estimation, and derivative pricing in finance and insurance. They show how the granularity principle leads to analytical formulas for risk analysis that are simple to implement and accurate even when the portfolio size is large.
Table of Contents
- 1. The standard asymptotic theorems and their limitations
- 2. Gaussian static factor
- 3. Static qualitative factor model
- 4. Nonlinear dynamic panel-data model
- 5. Prediction and basket derivative pricing
- 6. Granularity for risk measures.
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