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Is Agent-Based Modelling the Future of Prediction?

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Version 2 2023-11-21, 09:25
Version 1 2022-06-30, 14:50
journal contribution
posted on 2023-11-21, 09:25 authored by Edmund Chattoe-Brown

This article argues that Agent-Based Modelling, owing to its capabilities and methodology, has a distinctive contribution to make to delivering coherent social science prediction. The argument has four parts. The first identifies key elements of social science prediction induced from real research across disciplines, thus avoiding a straw person approach to what prediction is. The second illustrates Agent-Based Modelling using an example, showing how it provides a framework for coherent prediction analysis. As well as introducing the method to general readers, argument by example minimises generic discussion of Agent-Based Modelling and encourages prediction relevance. The third deepens the analysis by combining concepts from the model example and prediction research to examine distinctive contributions Agent-Based Modelling offers regarding two important challenges: Predictive failure and prediction assessment. The fourth presents a novel approach – predicting models using models – illustrating again how Agent-Based Modelling adds value to social science prediction.

Funding

ORA (Round 5) Towards realistic computational models of social influence dynamics

Economic and Social Research Council

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History

Author affiliation

School of Media, Communication and Sociology, University of Leicester

Version

  • VoR (Version of Record)

Published in

International Journal of Social Research Methodology

Volume

26

Issue

2

Pagination

143-155

Publisher

Taylor & Francis (Routledge)

issn

1364-5579

Acceptance date

2022-06-23

Copyright date

2022

Available date

2023-11-21

Language

en

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