A class of stochastic optimization problems with one quadratic & several linear objective functions and extended portfolio selection model

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摘要

In this paper a class of stochastic multiple-objective programming problems with one quadratic, several linear objective functions and linear constraints has been introduced. The former model is transformed into a deterministic multiple-objective nonlinear programming model by means of the introduction of random variables’ expectation. The reference direction approach is used to deal with linear objectives and results in a linear parametric optimization formula with a single linear objective function. This objective function is combined with the quadratic function using the weighted sums. The quadratic problem is transformed into a linear (parametric) complementary problem, the basic formula for the proposed approach. The sufficient and necessary conditions for (properly, weakly) efficient solutions and some construction characteristics of (weakly) efficient solution sets are obtained. An interactive algorithm is proposed based on reference direction and weighted sums. Varying the parameter vector on the right-hand side of the model, the DM can freely search the efficient frontier with the model. An extended portfolio selection model is formed when liquidity is considered as another objective to be optimized besides expectation and risk. The interactive approach is illustrated with a practical example.

论文关键词:(Stochastic) Multiple quadratic-linear programming,Interactive algorithm,(Weakly) Efficient solution,Portfolio selection model

论文评审过程:Received 7 December 2000, Revised 22 September 2001, Available online 14 May 2002.

论文官网地址:https://doi.org/10.1016/S0377-0427(02)00421-1