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Main Authors: Chacko, George, Park, Minhyuk, Ramavarapu, Vikram, Grama, Ananth, Robles-Granda, Pablo, Warnow, Tandy
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2503.06579
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author Chacko, George
Park, Minhyuk
Ramavarapu, Vikram
Grama, Ananth
Robles-Granda, Pablo
Warnow, Tandy
author_facet Chacko, George
Park, Minhyuk
Ramavarapu, Vikram
Grama, Ananth
Robles-Granda, Pablo
Warnow, Tandy
contents Whether citations can be objectively and reliably used to measure productivity and scientific quality of articles and researchers can, and should, be vigorously questioned. However, citations are widely used to estimate the productivity of researchers and institutions, effectively creating a 'grubby' motivation to be well-cited. We model citation growth, and this grubby interest using an agent-based model (ABM) of network growth. In this model, each new node (article) in a citation network is an autonomous agent that cites other nodes based on a 'citation personality' consisting of a composite bias for locality, preferential attachment, recency, and fitness. We ask whether strategic citation behavior (reference selection) by the author of a scientific article can boost subsequent citations to it. Our study suggests that fitness and, to a lesser extent, out_degree and locality effects are influential in capturing citations, which raises questions about similar effects in the real world.
format Preprint
id arxiv_https___arxiv_org_abs_2503_06579
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle An Agent-based Model of Citation Behavior
Chacko, George
Park, Minhyuk
Ramavarapu, Vikram
Grama, Ananth
Robles-Granda, Pablo
Warnow, Tandy
Social and Information Networks
Whether citations can be objectively and reliably used to measure productivity and scientific quality of articles and researchers can, and should, be vigorously questioned. However, citations are widely used to estimate the productivity of researchers and institutions, effectively creating a 'grubby' motivation to be well-cited. We model citation growth, and this grubby interest using an agent-based model (ABM) of network growth. In this model, each new node (article) in a citation network is an autonomous agent that cites other nodes based on a 'citation personality' consisting of a composite bias for locality, preferential attachment, recency, and fitness. We ask whether strategic citation behavior (reference selection) by the author of a scientific article can boost subsequent citations to it. Our study suggests that fitness and, to a lesser extent, out_degree and locality effects are influential in capturing citations, which raises questions about similar effects in the real world.
title An Agent-based Model of Citation Behavior
topic Social and Information Networks
url https://arxiv.org/abs/2503.06579