Calibrating Agent-Based Models with Linear Regressions

Carrella, Ernesto and Bailey, Richard and Madsen, Jens (2020) Calibrating Agent-Based Models with Linear Regressions. Journal of Artificial Societies and Social Simulation, 23 (1). ISSN 1460-7425

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Abstract

In this paper, we introduce a simple way to parametrize simulation models by using regularized linear regression. Regressions bypass the three major challenges of calibrating by minimization: selecting the summary statistics, defining the distance function and minimizing it numerically. By substituting regression with classification, we can extend this approach to model selection. We present five example estimations: a statistical fit, a biological individual-based model, a simple real business cycle model, a non-linear biological simulation and heuristics selection in a fishery agent-based model. The outcome is a method that automatically chooses summary statistics, weighs them and uses them to parametrize models without running any direct minimization.

Item Type: Article
Subjects: Article Archives > Computer Science
Depositing User: Unnamed user with email support@articlearchives.org
Date Deposited: 26 Mar 2024 03:49
Last Modified: 26 Mar 2024 03:49
URI: http://archive.paparesearch.co.in/id/eprint/1890

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