Title :
Unified Framework of Mean-Field Formulations for Optimal Multi-Period Mean-Variance Portfolio Selection
Author :
Xiangyu Cui ; Xun Li ; Duan Li
Author_Institution :
Sch. of Stat. & Manage., Shanghai Univ. of Finance & Econ., Shanghai, China
Abstract :
When a dynamic optimization problem is not decomposable by a stage-wise backward recursion, it is nonseparable in the sense of dynamic programming. The classical dynamic programming-based optimal stochastic control methods would fail in such nonseparable situations as the principle of optimality no longer applies. Among these notorious nonseparable problems, the dynamic mean-variance portfolio selection formulation had posed a great challenge to our research community until recently. Different from the existing literature that invokes embedding schemes and auxiliary parametric formulations to solve the dynamic mean-variance portfolio selection formulation, we propose in this paper a novel mean-field framework that offers a more efficient modeling tool and a more accurate solution scheme in tackling directly the issue of nonseparability and deriving the optimal policies analytically for the multi-period mean-variance-type portfolio selection problems.
Keywords :
dynamic programming; investment; optimal control; risk management; stochastic systems; auxiliary parametric formulations; dynamic mean-variance portfolio selection formulation; dynamic optimization problem; dynamic programming-based optimal stochastic control; mean-field formulations; mean-field framework; modeling tool; multiperiod mean-variance-type portfolio selection problems; nonseparability; optimal multiperiod mean-variance portfolio selection; optimality; stage-wise backward recursion; unified framework; Dynamic programming; Equations; Mathematical model; Optimal control; Portfolios; Stochastic processes; Vectors; Stochastic optimal control; intertemporal restrictions; mean-field formulation; multi-period mean-variance (MV) portfolio selection; risk control over bankruptcy;
Journal_Title :
Automatic Control, IEEE Transactions on
DOI :
10.1109/TAC.2014.2311875