Treffer: Surrogate-assisted hyper-parameter search for portfolio optimisation: multi-period considerations.

Title:
Surrogate-assisted hyper-parameter search for portfolio optimisation: multi-period considerations.
Authors:
van Zyl, Terence L.1 (AUTHOR) tvanzyl@uj.ac.za, Woolway, Matthew2 (AUTHOR) mjwoolway@uj.ac.za, Paskaramoorthy, Andrew3 (AUTHOR) andrew.paskaramoorthy@uct.ac.za
Source:
Neural Computing & Applications. Jun2025, Vol. 37 Issue 18, p11663-11680. 18p.
Database:
Academic Search Index

Weitere Informationen

Portfolio management is a multi-period multi-objective optimisation problem subject to various constraints. However, portfolio management is treated as a single-period problem partly due to the computationally burdensome hyper-parameter search procedure needed to construct a multi-period Pareto frontier. This study presents the Pareto driven surrogate (ParDen-Sur) modelling framework to efficiently perform the required hyper-parameter search. ParDen-Sur extends previous surrogate frameworks by including a reservoir sampling-based look-ahead mechanism for offspring generation in evolutionary algorithms (EAs) alongside the traditional acceptance sampling scheme. We evaluate this framework against, and in conjunction with, several seminal multi-objective (MO) EAs on two datasets for both the single- and multi-period use cases. When considering hypervolume ParDen-Sur improves marginally (0.8%) over the state-of-the-art (SOTA)-NSGA-II. However, for generational distance plus and inverted generational distance plus, these improvements over the SOTA are 19.4% and 66.5%, respectively. When considering the average number of evaluations and generations to reach a 99% success rate, ParDen-Sur is shown to be 1.84× and 2.02× more effective than the SOTA. This improvement is statistically significant for the Pareto frontiers, across multiple EAs, for both datasets and use cases. [ABSTRACT FROM AUTHOR]