异构约束网络的包容与识别

Murray Hill
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引用次数: 26

摘要

术语知识表示(TKR)系统,如KL-ONE,在人工智能中被广泛用于基于包容推理构建概念分类。然而,目前的TKR系统无法表示时间模式或从正在进行的观测中识别此类模式的实例。在服务人员调度和交互式用户界面计划识别等应用的激励下,我们通过引入术语QME(定性、度量和平等)网络来扩展TKR。在QME网络中,节点是TKR概念,弧是与节点相关的时间区间之间的定性约束、时间区间端点之间的度量约束以及不同概念角色之间的等式约束。我们使用QME网络来表示模式,并定义QME网络包容,这使我们能够将模式库组织到一个分类法中。我们还开发了一种基于包容和兼容性相关概念的预测模式识别的术语方法。当观察到事件和约束时,我们为每个模式分配“必要”、“可选”或“不可能”的模态。我们还展示了如何增强模式库以实现完全识别。这项工作在T-REX系统中实现,使TKR技术的更复杂应用成为可能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Subsumption and recognition of heterogeneous constraint networks
Terminological knowledge representation (TKR) systems, such as KL-ONE, are widely used in AI to construct concept taxonomies based on subsumption inferences. However, current TKR systems are unable to represent temporal patterns or recognize instances of such patterns from ongoing observations. Motivated by applications such as service personnel dispatching, and plan recognition for interactive user interfaces, we extend TKR by introducing terminological QME (qualitative, metric and equality) networks. In QME networks, nodes are TKR concepts and arcs are qualitative constraints between temporal intervals associated with nodes, metric constraints between end-points of temporal intervals, and equality constraints among roles of different concepts. We use QME networks to represent patterns, and define QME network subsumption, which enables us to organize a pattern library into a taxonomy. We also develop a terminological approach to predictive pattern recognition based on subsumption and a related notion of compatibility. We assign a modality of "necessary", "optional" or "impossible" to every pattern as events and constraints are observed. We also show how to augment a pattern library for complete recognition. This work, implemented in the T-REX system, enables more sophisticated applications of TKR technology.<>
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