Data-Driven Revision of Conditional Norms in Multi-Agent Systems

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    Abstract

    In multi-agent systems, norm enforcement is a mechanism for steering the behavior of individual agents in order to achieve desired system-level objectives. Due to the dynamics of multi-agent systems, however, it is hard to design norms that guarantee the achievement of the objectives in every operating context. Also, these objectives may change over time, thereby making previously defined norms ineffective. In this paper, we investigate the use of system execution data to automatically synthesise and revise conditional prohibitions with deadlines, a type of norms aimed at prohibiting agents from exhibiting certain patterns of behaviors. We propose DDNR (Data-Driven Norm Revision), a data-driven approach to norm revision that synthesises revised norms with respect to a data set of traces describing the behavior of the agents in the system. We evaluate DDNR using a state-of-the-art, offthe- shelf urban traffic simulator. The results show that DDNR synthesises revised norms that are significantly more accurate than the original norms in distinguishing adequate and inadequate behaviors for the achievement of the system-level objectives.

    Original languageEnglish
    Pages (from-to)1549-1593
    Number of pages45
    JournalJournal of Artificial Intelligence Research
    Volume75
    DOIs
    Publication statusPublished - 28 Dec 2022

    Bibliographical note

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    Keywords

    • autonomous agent
    • multiagent systems

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