Inequity aversion improves cooperation in intertemporal social dilemmas

Hughes, Edward, Leibo, Joel Z., Phillips, Matthew, Tuyls, Karl, Dueñez-Guzman, Edgar, Castañeda, Antonio García, Dunning, Iain, Zhu, Tina, McKee, Kevin, Koster, Raphael, Roff, Heather, Graepel, Thore

Neural Information Processing Systems 

Groups of humans are often able to find ways to cooperate with one another in complex, temporally extended social dilemmas. Models based on behavioral economics are only able to explain this phenomenon for unrealistic stateless matrix games. Recently, multi-agent reinforcement learning has been applied to generalize social dilemma problems to temporally and spatially extended Markov games. However, this has not yet generated an agent that learns to cooperate in social dilemmas as humans do. A key insight is that many, but not all, human individuals have inequity averse social preferences.