Abstract
To achieve system-level properties of a multiagent system, the behavior of individual agents should be controlled and coordinated. One way to control agents without limiting their autonomy is to enforce norms by means of sanctions. The dynamicity and unpredictability of the agents’ interactions in uncertain environments, however, make it hard for designers to specify norms that will guarantee the achievement of the system-level objectives in every operating context. In this paper, we propose a runtime mechanism for the automated revision of norms by altering their sanctions. We use a Bayesian Network to learn, from system execution data, the relationship between the obedience/violation of the norms and the achievement of the system-level objectives. By combining the knowledge acquired at runtime with an estimation of the preferences of rational agents, we devise heuristic strategies that automatically revise the sanctions of the enforced norms. We evaluate our heuristics using a traffic simulator and we show that our mechanism is able to quickly identify optimal revisions of the initially enforced norms.
Original language | English |
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Article number | 43 |
Number of pages | 54 |
Journal | Autonomous Agents and Multi-Agent Systems |
Volume | 34 |
Issue number | 2 |
DOIs | |
Publication status | Published - 1 Oct 2020 |
Funding
We thank Dr. Silja Renooij for her advice and support on the issues related to sensitivity analysis.
Keywords
- Multiagent systems
- Norm enforcement
- Norm revision