The pursuit of happiness
Debora Princepe, Onofrio Mazzarisi, Erol Akcay, Simon A. Levin, Matteo Marsili

TL;DR
This paper models happiness as a function of social interactions and explores how prosocial behavior influences equilibrium states in game-theoretic settings, revealing pathways to cooperation beyond traditional Nash equilibria.
Contribution
It introduces the homo-felix model where happiness depends on peer interactions and demonstrates how prosocial behavior can stabilize cooperation in multi-agent systems.
Findings
Happiness feedback loops influence individual care and social dynamics.
Homo-felix can reach diverse equilibria beyond Nash.
Prosocial individuals can induce widespread cooperation.
Abstract
Happiness, in the U.S. Declaration of Independence, was understood quite differently from today's popular notions of personal pleasure. Happiness implies a flourishing life - one of virtue, purpose, and contribution to the common good. This paper studies populations of individuals - that we call homo-felix - who maximise an objective function that we call happiness. The happiness of one individual depends on the payoffs that they receive in games they play with their peers as well as on the happiness of the peers they interact with. Individuals care more or less about others depending on whether that makes them more or less happy. This paper analyses the happiness feedback loops that result from these interactions in simple settings. We find that individuals tend to care more about individuals who are happier than what they would be by being selfish. In simple 2 x 2 game theoretic…
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Taxonomy
TopicsEvolutionary Game Theory and Cooperation · Experimental Behavioral Economics Studies · Game Theory and Applications
MethodsHierarchical Average Precision training for Pertinent ImagE Retrieval
