Quadratic Programming for Portfolio Planning: Insights into Algorithmic and Computational Issues. Part II – Processing of Portfolio Planning Models with Discrete Constraints

>Quadratic Programming for Portfolio Planning: Insights into Algorithmic and Computational Issues. Part II – Processing of Portfolio Planning Models with Discrete Constraints

Quadratic Programming for Portfolio Planning: Insights into Algorithmic and Computational Issues. Part II – Processing of Portfolio Planning Models with Discrete Constraints

Convex quadratic programming as applied to portfolio planning is established and well understood. In this paper, presented in two parts, we highlight the importance of choosing an algorithm that processes a family of problems efficiently. In Part I (published in issue 8/3), in particular, we described an adaptation of the simplex method for Quadratic Programming (QP). The method not only takes advantage of the sparse features of simplex, the use of the duality property makes it ideally suited for processing the discrete optimization models. Part II of the paper considers a family of discrete QP formulations of the portfolio problem, which capture threshold constraints and cardinality restrictions. We describe the adaptation a novel method branch, fix and relax to process this class of models efficiently. Theory and computational results are presented.

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2020-04-06T11:21:09+00:00 7 December 2018|