On the solution uniqueness in portfolio optimization and risk analysis

Bibliographic Details
Title: On the solution uniqueness in portfolio optimization and risk analysis
Authors: Grechuk, Bogdan, Palczewski, Andrzej, Palczewski, Jan
Publication Year: 2018
Collection: Quantitative Finance
Subject Terms: Quantitative Finance - Portfolio Management, Quantitative Finance - Mathematical Finance, 91G10 (Primary), 26B25, 90C25 (Secondary)
More Details: We consider the issue of solution uniqueness for portfolio optimization problem and its inverse for asset returns with a finite number of possible scenarios. The risk is assessed by deviation measures introduced by [Rockafellar et al., Mathematical Programming, Ser. B, 108 (2006), pp. 515-540] instead of variance as in the Markowitz optimization problem. We prove that in general one can expect uniqueness neither in forward nor in inverse problems. We discuss consequences of that non-uniqueness for several problems in risk analysis and portfolio optimization, including capital allocation, risk sharing, cooperative investment, and the Black-Litterman methodology. In all cases, the issue with non-uniqueness is closely related to the fact that subgradient of a convex function is non-unique at the points of non-differentiability. We suggest methodology to resolve this issue by identifying a unique "special" subgradient satisfying some natural axioms. This "special" subgradient happens to be the Stainer point of the subdifferential set.
Comment: 39 pages
Document Type: Working Paper
Access URL: http://arxiv.org/abs/1810.11299
Accession Number: edsarx.1810.11299
Database: arXiv
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