papers AI Learner
The Github is limit! Click to go to the new site.

Exogenous Rewards for Promoting Cooperation in Scale-Free Networks

2019-05-13
Theodor Cimpeanu, The Anh Han, Francisco C. Santos

Abstract

The design of mechanisms that encourage pro-social behaviours in populations of self-regarding agents is recognised as a major theoretical challenge within several areas of social, life and engineering sciences. When interference from external parties is considered, several heuristics have been identified as capable of engineering a desired collective behaviour at a minimal cost. However, these studies neglect the diverse nature of contexts and social structures that characterise real-world populations. Here we analyse the impact of diversity by means of scale-free interaction networks with high and low levels of clustering, and test various interference paradigms using simulations of agents facing a cooperative dilemma. Our results show that interference on scale-free networks is not trivial and that distinct levels of clustering react differently to each interference strategy. As such, we argue that no tailored response fits all scale-free networks and present which strategies are more efficient at fostering cooperation in both types of networks. Finally, we discuss the pitfalls of considering reckless interference strategies.

Abstract (translated by Google)
URL

http://arxiv.org/abs/1905.04964

PDF

http://arxiv.org/pdf/1905.04964


Similar Posts

Comments