Publication:
An extension to the classical mean–variance portfolio optimization model

Placeholder

Research Projects

Journal Title

Journal ISSN

Volume Title

Type

article

Access

restrictedAccess

Publication Status

Published

Journal Issue

Abstract

The purpose of this study is to find a portfolio that maximizes the risk-adjusted returns subject to constraints frequently faced during portfolio management by extending the classical Markowitz mean-variance portfolio optimization model. We propose a new two-step heuristic approach, GRASP & SOLVER, that evaluates the desirability of an asset by combining several properties about it into a single parameter. Using a real-life data set, we conduct a simulation study to compare our solution to a benchmark (S&P 500 index). We find that our method generates solutions satisfying nearly all of the constraints within reasonable computational time (under an hour), at the expense of a 13% reduction in the annual return of the portfolio, highlighting the effect of introducing these practice-based constraints.

Date

2019-07

Publisher

Taylor & Francis

Description

Keywords

Citation


Page Views

0

File Download

0