Scientific Reports (Apr 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

DOI
https://doi.org/10.1038/s41598-024-59743-8
Journal volume & issue
Vol. 14, no. 1
pp. 1 – 16

Abstract

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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.