The crime of being poor
- URL: http://arxiv.org/abs/2303.14128v1
- Date: Fri, 24 Mar 2023 16:35:42 GMT
- Title: The crime of being poor
- Authors: Georgina Curto, Svetlana Kiritchenko, Isar Nejadgholi and Kathleen C.
Fraser
- Abstract summary: The paper quantifies the level of crime-poverty bias in a panel of eight different English-speaking countries.
The variation in the observed rates of crime-poverty bias for different geographic locations could be influenced by cultural factors.
- Score: 7.586041161211335
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The criminalization of poverty has been widely denounced as a collective bias
against the most vulnerable. NGOs and international organizations claim that
the poor are blamed for their situation, are more often associated with
criminal offenses than the wealthy strata of society and even incur criminal
offenses simply as a result of being poor. While no evidence has been found in
the literature that correlates poverty and overall criminality rates, this
paper offers evidence of a collective belief that associates both concepts.
This brief report measures the societal bias that correlates criminality with
the poor, as compared to the rich, by using Natural Language Processing (NLP)
techniques in Twitter. The paper quantifies the level of crime-poverty bias in
a panel of eight different English-speaking countries. The regional differences
in the association between crime and poverty cannot be justified based on
different levels of inequality or unemployment, which the literature correlates
to property crimes. The variation in the observed rates of crime-poverty bias
for different geographic locations could be influenced by cultural factors and
the tendency to overestimate the equality of opportunities and social mobility
in specific countries. These results have consequences for policy-making and
open a new path of research for poverty mitigation with the focus not only on
the poor but on society as a whole. Acting on the collective bias against the
poor would facilitate the approval of poverty reduction policies, as well as
the restoration of the dignity of the persons affected.
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