This paper proposes a new simulation approach for investigating phenomena such as norm emergence and internalization in large groups of learning agents. We define a probabilistic defeasible logic instantiating Dung’s argumentation framework. Rules of this logic are attached to probabilities and describe the agents’ minds and behaviour. We thus adopt the paradigm of reinforcement learning over this probability distribution to allow agents to adapt to their environment.

R. Riveret, A. Rotolo, G. Sartor (2012). Norms and Learning in Probabilistic Logic-Based Agents. BERLIN : Springer [10.1007/978-3-642-31570-1_9].

Norms and Learning in Probabilistic Logic-Based Agents

RIVERET, REGIS;ROTOLO, ANTONINO;SARTOR, GIOVANNI
2012

Abstract

This paper proposes a new simulation approach for investigating phenomena such as norm emergence and internalization in large groups of learning agents. We define a probabilistic defeasible logic instantiating Dung’s argumentation framework. Rules of this logic are attached to probabilities and describe the agents’ minds and behaviour. We thus adopt the paradigm of reinforcement learning over this probability distribution to allow agents to adapt to their environment.
2012
Deontic Logic in Computer Science: 11th International Conference, DEON 2012, Bergen, Norway, July 16-18, 2012. Proceedings
123
138
R. Riveret, A. Rotolo, G. Sartor (2012). Norms and Learning in Probabilistic Logic-Based Agents. BERLIN : Springer [10.1007/978-3-642-31570-1_9].
R. Riveret; A. Rotolo; G. Sartor
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/132842
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