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Main Authors: De Domenico, Federica, Caccioli, Fabio, Livan, Giacomo, Montagna, Guido, Nicrosini, Oreste
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2401.15968
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author De Domenico, Federica
Caccioli, Fabio
Livan, Giacomo
Montagna, Guido
Nicrosini, Oreste
author_facet De Domenico, Federica
Caccioli, Fabio
Livan, Giacomo
Montagna, Guido
Nicrosini, Oreste
contents Participants in socio-economic systems are often ranked based on their performance. Rankings conveniently reduce the complexity of such systems to ordered lists. Yet, it has been shown in many contexts that those who reach the top are not necessarily the most talented, as chance plays a role in shaping rankings. Nevertheless, the role played by chance in determining success, i.e., serendipity, is underestimated, and top performers are often imitated by others under the assumption that adopting their strategies will lead to equivalent results. We investigate the tradeoff between imitation and serendipity in an agent-based model. Agents in the model receive payoffs based on their actions and may switch to different actions by either imitating others or through random selection. When imitation prevails, most agents coordinate on a single action, leading to non-meritocratic outcomes, as a minority of them accumulates the majority of payoffs. Yet, such agents are not necessarily the most skilled ones. When serendipity dominates, instead, we observe more egalitarian outcomes. The two regimes are separated by a sharp transition, which we characterise analytically in a simplified setting. We discuss the implications of our findings in a variety of contexts, ranging from academic research to business.
format Preprint
id arxiv_https___arxiv_org_abs_2401_15968
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Imitation vs serendipity in ranking dynamics
De Domenico, Federica
Caccioli, Fabio
Livan, Giacomo
Montagna, Guido
Nicrosini, Oreste
Physics and Society
Participants in socio-economic systems are often ranked based on their performance. Rankings conveniently reduce the complexity of such systems to ordered lists. Yet, it has been shown in many contexts that those who reach the top are not necessarily the most talented, as chance plays a role in shaping rankings. Nevertheless, the role played by chance in determining success, i.e., serendipity, is underestimated, and top performers are often imitated by others under the assumption that adopting their strategies will lead to equivalent results. We investigate the tradeoff between imitation and serendipity in an agent-based model. Agents in the model receive payoffs based on their actions and may switch to different actions by either imitating others or through random selection. When imitation prevails, most agents coordinate on a single action, leading to non-meritocratic outcomes, as a minority of them accumulates the majority of payoffs. Yet, such agents are not necessarily the most skilled ones. When serendipity dominates, instead, we observe more egalitarian outcomes. The two regimes are separated by a sharp transition, which we characterise analytically in a simplified setting. We discuss the implications of our findings in a variety of contexts, ranging from academic research to business.
title Imitation vs serendipity in ranking dynamics
topic Physics and Society
url https://arxiv.org/abs/2401.15968