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首页> 外文期刊>The Journal of Artificial Intelligence Research >Managing Different Sources of Uncertainty in a BDI Framework in a Principled Way with Tractable Fragments
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Managing Different Sources of Uncertainty in a BDI Framework in a Principled Way with Tractable Fragments

机译:在BDI框架中以有原则的方式利用可分割的片段来管理不确定性的不同来源

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The Belief-Desire-Intention (BDI) architecture is a practical approach for modelling large-scale intelligent systems. In the BDI setting, a complex system is represented as a network of interacting agents - or components - each one modelled based on its beliefs, desires and intentions. However, current BDI implementations are not well-suited for modelling more realistic intelligent systems which operate in environments pervaded by different types of uncertainty. Furthermore, existing approaches for dealing with uncertainty typically do not offer syntactical or tractable ways of reasoning about uncertainty. This complicates their integration with BDI implementations, which heavily rely on fast and reactive decisions. In this paper, we advance the state-of-the-art w.r.t. handling different types of uncertainty in BDI agents. The contributions of this paper are, first, a new way of modelling the beliefs of an agent as a set of epistemic states. Each epistemic state can use a distinct underlying uncertainty theory and revision strategy, and commensurability between epistemic states is achieved through a stratification approach. Second, we present a novel syntactic approach to revising beliefs given unreliable input. We prove that this syntactic approach agrees with the semantic definition, and we identify expressive fragments that are particularly useful for resource-bounded agents. Third, we introduce full operational semantics that extend CAN, a popular semantics for BDI, to establish how reasoning about uncertainty can be tightly integrated into the BDI framework. Fourth, we provide comprehensive experimental results to highlight the usefulness and feasibility of our approach, and explain how the generic epistemic state can be instantiated into various representations.
机译:Belief-Desire-Intent(BDI)体系结构是一种用于对大型智能系统建模的实用方法。在BDI设置中,一个复杂的系统被表示为相互作用的代理程序(或组件)的网络,每个都基于其信念,愿望和意图进行建模。但是,当前的BDI实现并不十分适合于对更现实的智能系统进行建模,这些系统在充满不同类型不确定性的环境中运行。此外,用于处理不确定性的现有方法通常不提供关于不确定性的句法或易懂的推理方法。这使它们与BDI实施的集成变得更加复杂,而BDI实施很大程度上依赖于快速而被动的决策。在本文中,我们提出了最新的建议。在BDI代理中处理不同类型的不确定性。首先,本文的贡献是一种将代理的信念建模为认知状态集的新方法。每个认知状态可以使用不同的潜在不确定性理论和修订策略,并且通过分层方法可以实现认知状态之间的可比性。其次,我们提出了一种新颖的句法方法,用于在输入不可靠的情况下修改信念。我们证明了这种语法方法与语义定义相符,并且我们确定了对资源有限的代理特别有用的表达片段。第三,我们介绍了完整的操作语义,该语义扩展了CAN(BDI的流行语义),以建立不确定性推理如何紧密集成到BDI框架中的方法。第四,我们提供了全面的实验结果,以突出我们的方法的实用性和可行性,并解释了如何将通用的认知状态实例化为各种表示形式。

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