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Execution monitoring in multi-agent environments.

机译:多代理环境中的执行监视。

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摘要

Agents in dynamic multi-agent environments must monitor their peers and the environment to execute individual and group plans, to ascertain their progress, and to detect failures. In practice, however, agents cannot continuously monitor all surroundings and their peers. This leads to uncertainty about monitored agents' states, and aggravates computational requirements. A key open question is thus how to limit monitoring activities while providing effective monitoring: The Monitoring Selectivity Problem. We investigate this question in the context of monitoring in teams of cooperation agents, in three complex, dynamic multi-agent domains, and in service of different monitoring tasks: Monitoring for coordination and teamwork failures, and monitoring distributed teams via their communications.; We provide empirical and analytical answers to the monitoring selectivity problem, via Socially-Attentive Monitoring, which focuses on using knowledge about the relationships between monitored agents and the procedures used to maintain these relationships. We explore a family of socially attentive teamwork failure-detection algorithms under varying conditions of task distribution and uncertainty. We show that a centralized scheme using a complex algorithm trades correctness for completeness and requires monitoring all teammates. In contrast, a simple distributed teamwork-monitoring algorithm exploits agents' local state and results in correct and complete detection of teamwork failures, despite relying on limited, uncertain knowledge, and monitoring only key agents in a team. In monitoring a distributed team, we present heuristics for talking monitoring uncertainty (which results from the limited overheard communications), and provide empirical results demonstrating that socially attentive techniques can significantly reduce the uncertainty in such monitoring. Furthermore, we explore monitoring algorithms which trade-off efficiency for expressivity's, resulting in a limited-expressivity's algorithm that can detect failures and provide high-accuracy monitoring of a team and its members, using a single, constant-space structure. In addition, we report on the design, constant space, structure. In addition, we report on the design of a socially attentive monitoring system and demonstrate its generality in monitoring several coordination relationships in providing quantitative teamwork evaluation, and in diagnosing detected failures.
机译:动态多代理程序环境中的代理程序必须监视其对等方和环境,以执行个人和组计划,确定其进度并检测故障。但是,实际上,代理无法连续监视所有周围环境及其同伴。这导致有关受监视代理状态的不确定性,并加重了计算要求。因此,一个关键的悬而未决的问题是如何在提供有效监视的同时限制监视活动:监视选择性问题。我们在合作代理团队的监视,三个复杂的动态多代理域中的监视以及服务于不同监视任务的情况下调查此问题:监视协调和团队失败,以及通过其通信监视分布式团队。我们通过社会关注型监测为监测选择性问题提供了经验和分析答案,该研究重点是利用有关受监测代理之间的关系以及用于维护这些关系的过程的知识。我们探索了一系列在任务分配和不确定性条件下具有社会关注度的团队合作失败检测算法。我们证明了使用复杂算法的集中式方案必须以完整性为代价,并且需要监视所有队友。相比之下,尽管依赖于有限的不确定知识,并且仅监视团队中的关键代理,但简单的分布式团队监视算法可利用代理的本地状态并导致正确,完整地检测团队失败。在监视分布式团队时,我们提出了交谈式监视不确定性的启发式方法(这是由有限的窃听交流引起的),并提供了经验性结果,表明社交专心技术可以大大减少此类监视中的不确定性。此外,我们探索了一种监视算法,该算法权衡了表达能力的效率,从而产生了一种有限表达能力的算法,该算法可以检测故障并使用单个恒定空间结构提供对团队及其成员的高精度监视。另外,我们报告设计,恒定空间,结构。此外,我们报告了一个关注社会的监控系统的设计,并展示了其在监控多个协调关系,提供定量团队评估和诊断检测到的故障方面的普遍性。

著录项

  • 作者

    Kaminka, Gal Aharon.;

  • 作者单位

    University of Southern California.;

  • 授予单位 University of Southern California.;
  • 学科 Computer Science.
  • 学位 Ph.D.
  • 年度 2000
  • 页码 130 p.
  • 总页数 130
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 自动化技术、计算机技术;
  • 关键词

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