Publication Date:
2011
abstract:
As explained by Axelrod in his seminal work
An
Evolutionary Approach to Norms
, punishment is a
key mechanism to achieve the necessary social con-
trol and to impose social norms in a self-regulated
society. In this paper, we distinguish between two
enforcing mechanisms. i.e.
punishment
and
sanc-
tion
, focusing on the specific ways in which they fa-
vor the emergence and maintenance of cooperation.
The key research question is to find more stable
and cheaper mechanisms for norm compliance in
hybrid social environments (populated by humans
and computational agents). To achieve this task, we
have developed a normative agent able to punish
and sanction defectors and to dynamically choose
the right amount of punishment and sanction to
impose on them (
Dynamic Adaptation Heuristic
).
The results obtained through agent-based simula-
tion show us that sanction is more effective and
less costly than punishment in the achievement and
maintenance of cooperation and it makes the pop-
ulation more resilient to sudden changes than if it
were enforced only by mere pu
Iris type:
04.01 Contributo in Atti di convegno
Keywords:
-
List of contributors:
Conte, Rosaria; MISSIKOFF ANDRIGHETTO, Giulia
Book title:
IJCAI'11 Proceedings of the Twenty-Second international joint conference on Artificial Intelligence. AAAI Press : Menlo Park [CA] (Stati Uniti d'America)