4.7 Article

Split Bregman iteration for multi-period mean variance portfolio optimization

期刊

APPLIED MATHEMATICS AND COMPUTATION
卷 392, 期 -, 页码 -

出版社

ELSEVIER SCIENCE INC
DOI: 10.1016/j.amc.2020.125715

关键词

Portfolio selection; Fused lasso; Nonsmooth optimization; Split Bregman

资金

  1. INdAM-GNCS Projects
  2. Research grant of UniversitaParthenope [953]
  3. VAIN-HOPES Project - 2019 V:ALERE (VAnviteLli pEr la RicErca) Program

向作者/读者索取更多资源

This paper investigates the optimal long-term investment strategy with the ability to exit the investment before maturity without severe loss. A model based on a fused lasso approach in the Markowitz context is developed to handle the problem. The split Bregman method is used to solve the non-smooth constrained optimization problem efficiently.
This paper investigates the problem of defining an optimal long-term investment strategy, where the investor can exit the investment before maturity without severe loss. Our setting is a multi-period one, where the aim is to make a plan for allocating all of wealth among the n assets within a time horizon of m periods. In addition, the investor can rebalance the portfolio at the beginning of each period. We develop a model in Markowitz context, based on a fused lasso approach. According to it, both wealth and its variation across periods are penalized using the l 1 norm, so to produce sparse portfolios, with limited number of transactions. The model leads to a non-smooth constrained optimization problem, where the inequality constraints are aimed to guarantee at least a minimum level of expected wealth at each date. We solve it by using split Bregman method, that has proved to be efficient in the solution of this type of problems. Due to the additive structure of the objective function, the alternating split Bregman at each iteration yields to easier subproblems to be solved, which either admit closed form solutions or can be solved very quickly. Numerical results on data sets generated using real-world price values show the effectiveness of the proposed model. (c) 2020 Elsevier Inc. All rights reserved.

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