DOAJ Open Access 2024

Temporal meta-optimiser based sensitivity analysis (TMSA) for agent-based models and applications in children’s services

Luke White Shadi Basurra Abdulrahman A. Alsewari Faisal Saeed Sudhamshu Mohan Addanki

Abstrak

Abstract With current and predicted economic pressures within English Children’s Services in the UK, there is a growing discourse around the development of methods of analysis using existing data to make more effective interventions and policy decisions. Agent-Based modelling shows promise in aiding in this, with limitations that require novel methods to overcome. This can include challenges in managing model complexity, transparency, and validation; which may deter analysts from implementing such Agent-Based simulations. Children’s Services specifically can gain from the expansion of modelling techniques available to them. Sensitivity analysis is a common step when analysing models that currently has methods with limitations regarding Agent-Based Models. This paper outlines an improved method of conducting Sensitivity Analysis to enable better utilisation of Agent-Based models (ABMs) within Children’s Services. By using machine learning based regression in conjunction with the Nomadic Peoples Optimiser (NPO) a method of conducting sensitivity analysis tailored for ABMs is achieved. This paper demonstrates the effectiveness of the approach by drawing comparisons with common existing methods of sensitivity analysis, followed by a demonstration of an improved ABM design in the target use case.

Topik & Kata Kunci

Penulis (5)

L

Luke White

S

Shadi Basurra

A

Abdulrahman A. Alsewari

F

Faisal Saeed

S

Sudhamshu Mohan Addanki

Format Sitasi

White, L., Basurra, S., Alsewari, A.A., Saeed, F., Addanki, S.M. (2024). Temporal meta-optimiser based sensitivity analysis (TMSA) for agent-based models and applications in children’s services. https://doi.org/10.1038/s41598-024-59743-8

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Informasi Jurnal
Tahun Terbit
2024
Sumber Database
DOAJ
DOI
10.1038/s41598-024-59743-8
Akses
Open Access ✓