Processing second-order stochastic dominance models using cutting-plane representations

被引:0
|
作者
Csaba I. Fábián
Gautam Mitra
Diana Roman
机构
[1] Kecskemét College,Institute of Informatics
[2] Loránd Eötvös University,Department of OR
[3] Brunel University,CARISMA: The Centre for the Analysis of Risk and Optimisation Modelling Applications, School of Information Systems, Computing and Mathematics
来源
Mathematical Programming | 2011年 / 130卷
关键词
90C15 Stochastic programming; 90C25 Convex programming; 91G10 Portfolio theory; 91G60 Numerical methods; 91G70 Statistical methods;
D O I
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中图分类号
学科分类号
摘要
Second-order stochastic dominance (SSD) is widely recognised as an important decision criterion in portfolio selection. Unfortunately, stochastic dominance models are known to be very demanding from a computational point of view. In this paper we consider two classes of models which use SSD as a choice criterion. The first, proposed by Dentcheva and Ruszczyński (J Bank Finance 30:433–451, 2006), uses a SSD constraint, which can be expressed as integrated chance constraints (ICCs). The second, proposed by Roman et al. (Math Program, Ser B 108:541–569, 2006) uses SSD through a multi-objective formulation with CVaR objectives. Cutting plane representations and algorithms were proposed by Klein Haneveld and Van der Vlerk (Comput Manage Sci 3:245–269, 2006) for ICCs, and by Künzi-Bay and Mayer (Comput Manage Sci 3:3–27, 2006) for CVaR minimization. These concepts are taken into consideration to propose representations and solution methods for the above class of SSD based models. We describe a cutting plane based solution algorithm and outline implementation details. A computational study is presented, which demonstrates the effectiveness and the scale-up properties of the solution algorithm, as applied to the SSD model of Roman et al. (Math Program, Ser B 108:541–569, 2006).
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页码:33 / 57
页数:24
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