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Main Authors: Tucker, Riley, Rim, Nakwon, Chao, Alfred, Gaillard, Elizabeth, Berman, Marc G.
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2408.10018
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author Tucker, Riley
Rim, Nakwon
Chao, Alfred
Gaillard, Elizabeth
Berman, Marc G.
author_facet Tucker, Riley
Rim, Nakwon
Chao, Alfred
Gaillard, Elizabeth
Berman, Marc G.
contents Recent ethnographic research reveals that gang dynamics in Chicago's Southside have evolved with decentralized micro-gang "set" factions and cross-gang interpersonal networks marking the contemporary landscape. However, standard police datasets lack the depth to analyze gang violence with such granularity. To address this, we employed a natural language processing strategy to analyze text from a Chicago gangs message board. By identifying proper nouns, probabilistically linking them to gang sets, and assuming social connections among names mentioned together, we created a social network dataset of 271 individuals across 11 gang sets. Using Louvain community detection, we found that these individuals often connect with gang-affiliated peers from various gang sets that are physically proximal. Hierarchical logistic regression revealed that individuals with ties to homicide victims and central positions in the overall gang network were at increased risk of victimization, regardless of gang affiliation. This research demonstrates that utilizing crowd-sourced information online can enable the study of otherwise inaccessible topics and populations.
format Preprint
id arxiv_https___arxiv_org_abs_2408_10018
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle "EBK" : Leveraging Crowd-Sourced Social Media Data to Quantify How Hyperlocal Gang Affiliations Shape Personal Networks and Violence in Chicago's Contemporary Southside
Tucker, Riley
Rim, Nakwon
Chao, Alfred
Gaillard, Elizabeth
Berman, Marc G.
Social and Information Networks
J.4
Recent ethnographic research reveals that gang dynamics in Chicago's Southside have evolved with decentralized micro-gang "set" factions and cross-gang interpersonal networks marking the contemporary landscape. However, standard police datasets lack the depth to analyze gang violence with such granularity. To address this, we employed a natural language processing strategy to analyze text from a Chicago gangs message board. By identifying proper nouns, probabilistically linking them to gang sets, and assuming social connections among names mentioned together, we created a social network dataset of 271 individuals across 11 gang sets. Using Louvain community detection, we found that these individuals often connect with gang-affiliated peers from various gang sets that are physically proximal. Hierarchical logistic regression revealed that individuals with ties to homicide victims and central positions in the overall gang network were at increased risk of victimization, regardless of gang affiliation. This research demonstrates that utilizing crowd-sourced information online can enable the study of otherwise inaccessible topics and populations.
title "EBK" : Leveraging Crowd-Sourced Social Media Data to Quantify How Hyperlocal Gang Affiliations Shape Personal Networks and Violence in Chicago's Contemporary Southside
topic Social and Information Networks
J.4
url https://arxiv.org/abs/2408.10018