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Bibliographic Details
Main Authors: Aguilera, Alba, Albertí, Miquel, Osman, Nardine, Curto, Georgina
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2408.09407
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author Aguilera, Alba
Albertí, Miquel
Osman, Nardine
Curto, Georgina
author_facet Aguilera, Alba
Albertí, Miquel
Osman, Nardine
Curto, Georgina
contents In recent years, computational improvements have allowed for more nuanced, data-driven and geographically explicit agent-based simulations. So far, simulations have struggled to adequately represent the attributes that motivate the actions of the agents. In fact, existing population synthesis frameworks generate agent profiles limited to socio-demographic attributes. In this paper, we introduce a novel value-enriched population synthesis framework that integrates a motivational layer with the traditional individual and household socio-demographic layers. Our research highlights the significance of extending the profile of agents in synthetic populations by incorporating data on values, ideologies, opinions and vital priorities, which motivate the agents' behaviour. This motivational layer can help us develop a more nuanced decision-making mechanism for the agents in social simulation settings. Our methodology integrates microdata and macrodata within different Bayesian network structures. This contribution allows to generate synthetic populations with integrated value systems that preserve the inherent socio-demographic distributions of the real population in any specific region.
format Preprint
id arxiv_https___arxiv_org_abs_2408_09407
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Value-Enriched Population Synthesis: Integrating a Motivational Layer
Aguilera, Alba
Albertí, Miquel
Osman, Nardine
Curto, Georgina
Multiagent Systems
In recent years, computational improvements have allowed for more nuanced, data-driven and geographically explicit agent-based simulations. So far, simulations have struggled to adequately represent the attributes that motivate the actions of the agents. In fact, existing population synthesis frameworks generate agent profiles limited to socio-demographic attributes. In this paper, we introduce a novel value-enriched population synthesis framework that integrates a motivational layer with the traditional individual and household socio-demographic layers. Our research highlights the significance of extending the profile of agents in synthetic populations by incorporating data on values, ideologies, opinions and vital priorities, which motivate the agents' behaviour. This motivational layer can help us develop a more nuanced decision-making mechanism for the agents in social simulation settings. Our methodology integrates microdata and macrodata within different Bayesian network structures. This contribution allows to generate synthetic populations with integrated value systems that preserve the inherent socio-demographic distributions of the real population in any specific region.
title Value-Enriched Population Synthesis: Integrating a Motivational Layer
topic Multiagent Systems
url https://arxiv.org/abs/2408.09407