Can Poverty Be Reduced by Acting on Discrimination? An Agent-based Model
for Policy Making
- URL: http://arxiv.org/abs/2403.01600v1
- Date: Sun, 3 Mar 2024 19:59:42 GMT
- Title: Can Poverty Be Reduced by Acting on Discrimination? An Agent-based Model
for Policy Making
- Authors: Alba Aguilera, Nieves Montes, Georgina Curto, Carles Sierra and
Nardine Osman
- Abstract summary: We present the novel Aporophobia Agent-Based Model (AABM) to provide evidence of the correlation between aporophobia and poverty.
We classify policies as discriminatory or non-discriminatory against the poor.
We observe the results in the AABM in terms of the impact on wealth inequality.
- Score: 6.749750044497731
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In the last decades, there has been a deceleration in the rates of poverty
reduction, suggesting that traditional redistributive approaches to poverty
mitigation could be losing effectiveness, and alternative insights to advance
the number one UN Sustainable Development Goal are required. The
criminalization of poor people has been denounced by several NGOs, and an
increasing number of voices suggest that discrimination against the poor (a
phenomenon known as \emph{aporophobia}) could be an impediment to mitigating
poverty. In this paper, we present the novel Aporophobia Agent-Based Model
(AABM) to provide evidence of the correlation between aporophobia and poverty
computationally. We present our use case built with real-world demographic data
and poverty-mitigation public policies (either enforced or under parliamentary
discussion) for the city of Barcelona. We classify policies as discriminatory
or non-discriminatory against the poor, with the support of specialized NGOs,
and we observe the results in the AABM in terms of the impact on wealth
inequality. The simulation provides evidence of the relationship between
aporophobia and the increase of wealth inequality levels, paving the way for a
new generation of poverty reduction policies that act on discrimination and
tackle poverty as a societal problem (not only a problem of the poor).
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