A monotone numerical integration method for mean-variance portfolio optimization under jump-diffusion models
Hanwen Zhang, Duy-Minh Dang

TL;DR
This paper introduces a monotone numerical integration method for mean-variance portfolio optimization under jump-diffusion models, improving computational efficiency and stability while handling realistic constraints.
Contribution
It develops a novel, strictly monotone integration scheme using Fourier transforms for jump-diffusion models, with proven convergence and lower computational complexity.
Findings
Method achieves order-of-magnitude faster computation than existing methods.
Numerical results align closely with benchmark solutions.
Scheme is proven to be stable, consistent, and convergent.
Abstract
We develop a efficient, easy-to-implement, and strictly monotone numerical integration method for Mean-Variance (MV) portfolio optimization in realistic contexts, which involve jump-diffusion dynamics of the underlying controlled processes, discrete rebalancing, and the application of investment constraints, namely no-bankruptcy and leverage. A crucial element of the MV portfolio optimization formulation over each rebalancing interval is a convolution integral, which involves a conditional density of the logarithm of the amount invested in the risky asset. Using a known closed-form expression for the Fourier transform of this density, we derive an infinite series representation for the conditional density where each term is strictly positive and explicitly computable. As a result, the convolution integral can be readily approximated through a monotone integration scheme, such as a…
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Taxonomy
TopicsStochastic processes and financial applications · Monetary Policy and Economic Impact · demographic modeling and climate adaptation
MethodsConvolution
