Geometrical Methods in Multivariate Risk Management: Algorithms and Applications


Autoria(s): Bazovkin, Pavlo
Data(s)

2014

Resumo

This thesis builds a framework for evaluating downside risk from multivariate data via a special class of risk measures (RM). The peculiarity of the analysis lies in getting rid of strong data distributional assumptions and in orientation towards the most critical data in risk management: those with asymmetries and heavy tails. At the same time, under typical assumptions, such as the ellipticity of the data probability distribution, the conformity with classical methods is shown. The constructed class of RM is a multivariate generalization of the coherent distortion RM, which possess valuable properties for a risk manager. The design of the framework is twofold. The first part contains new computational geometry methods for the high-dimensional data. The developed algorithms demonstrate computability of geometrical concepts used for constructing the RM. These concepts bring visuality and simplify interpretation of the RM. The second part develops models for applying the framework to actual problems. The spectrum of applications varies from robust portfolio selection up to broader spheres, such as stochastic conic optimization with risk constraints or supervised machine learning.

Formato

application/pdf

Identificador

http://kups.ub.uni-koeln.de/7040/1/Diss%2DBazElecVer.pdf

Bazovkin, Pavlo (2014) Geometrical Methods in Multivariate Risk Management: Algorithms and Applications. PhD thesis, Universität zu Köln.

Relação

http://kups.ub.uni-koeln.de/7040/

Palavras-Chave #Data processing Computer science #General statistics #Mathematics #Management and auxiliary services
Tipo

Thesis

NonPeerReviewed