Evaluating the SBR Algorithm Using Automatically Generated Plan Libraries

G. Farias, L. Hilgert, Felipe Meneguzzi, Rafael Heitor Bordini
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Abstract

Most approaches to plan recognition are based on manually constructed rules, where the knowledge base is represented as a plan library for recognising plans. For non-trivial domains, such plan libraries have complex structures representing possible agent behaviour to achieve a plan. Existing plan recognition approaches are seldom tested at their limits, and, though they use conceptually similar plan library representations, they rarely use the exact same domain in order to directly compare their performance, leading to the need for a principled approach to evaluating them. Thus, we develop a mechanism to automatically generate arbitrarily complex plan libraries which can be directed through a number of parameters, in order to create plan libraries representing different domains and so allowing systematic experimentation and comparison among the several plan recognition algorithms. We validate our mechanism by carrying out an experiment to evaluate the performance of a known plan recognition algorithm.
使用自动生成计划库评估SBR算法
大多数计划识别方法是基于人工构建的规则,其中知识库表示为识别计划的计划库。对于非平凡领域,这样的计划库具有复杂的结构,表示实现计划的可能代理行为。现有的计划识别方法很少在它们的极限上进行测试,而且,尽管它们使用概念上相似的计划库表示,它们很少使用完全相同的领域来直接比较它们的性能,这导致需要一种有原则的方法来评估它们。因此,我们开发了一种机制来自动生成任意复杂的平面库,这些平面库可以通过许多参数来指导,以便创建代表不同领域的平面库,从而允许系统的实验和比较几种平面识别算法。我们通过进行实验来评估已知的计划识别算法的性能来验证我们的机制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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