The Co-evolution of Costly Signaling and Cooperation in Social Dilemmas
Mahdi Abolhasani, Saman Moghimi-Araghi, Mohammad Salahshour
TLDR
This paper models how costly signaling and cooperation co-evolve in social dilemmas, showing signals are selected by cooperative responses they elicit.
Key contributions
- Introduces a model for the co-evolution of costly signals and cooperation in social dilemmas.
- Shows signals are selected based on cooperative responses they elicit, not just production costs.
- Demonstrates partial cooperation in PD/SD, near-complete in SH, enhanced by spatial lattices.
- Explains game-specific dynamics using mean-field analysis, highlighting the need for transient correlations in PD.
Why it matters
This research clarifies how costly signals can persist by organizing cooperative responses, thereby reshaping strategic environments. It offers insights into the mechanisms underlying cooperation in complex biological and social systems.
Original Abstract
Costly cooperation and costly signaling are both difficult to reconcile with simple fitness maximization, yet both are common in biological and social systems. We study a model in which agents emit costly signals and condition their actions on the signals they observe. Across the Prisoner's Dilemma (PD), Snowdrift (SD), and Stag Hunt (SH) games, we ask when this coevolutionary process can sustain cooperation and how it changes across well-mixed populations, spatial lattices, and fluctuating strategic environments. The simulations show that signals are selected less by their raw production costs than by the cooperative responses they currently elicit. In well-mixed populations, the mechanism sustains partial cooperation in PD and SD and drives near-complete cooperation in SH. On lattices, cooperation is strengthened further by local assortment. A reduced mean-field analysis explains why average population feedback is already sufficient in SD and SH, but not in the PD. To account for the PD dynamics, the reduced theory must include transient correlations associated with rare signals, inheritance, or spatial clustering. Our results therefore delineate a class of settings in which costly signals persist because they transiently organize cooperative responses and thereby reshape the effective strategic environment.
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