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Inductive Logic Programming Algorithm for Estimating Quality of Partial Plans

机译:借鉴部分规划质量的归纳逻辑编程算法

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We study agents situated in partially observable environments, who do not have the resources to create conformant plans. Instead, they create conditional plans which are partial, and learn from experience to choose the best of them for execution. Our agent employs an incomplete symbolic deduction system based on Active Logic and Situation Calculus for reasoning about actions and their consequences. An Inductive Logic Programming algorithm generalises observations and deduced knowledge in order to choose the best plan for execution. We show results of using PROGOL learning algorithm to distinguish "bad" plans, and we present three modifications which make the algorithm fit this class of problems better. Specifically, we limit the search space by fixing semantics of conditional branches within plans, we guide the search by specifying relative relevance of portions of knowledge base, and we integrate learning algorithm into the agent architecture by allowing it to directly access the agent's knowledge encoded in Active Logic. We report on experiments which show that those extensions lead to significantly better learning results.
机译:我们研究了位于部分可观察到的环境中的代理,他们没有资源创建符合计划。相反,它们创建了部分的条件计划,这些计划是部分的,并从经验中学习以选择最好的执行。我们的代理人基于主动逻辑和情况微积分采用不完整的象征性扣除系统,了解行动及其后果。归纳逻辑编程算法概述了观测和推导的知识,以便选择最佳执行计划。我们显示使用Proogol学习算法的结果区分“坏”计划,我们提出了三种修改,使算法更好地符合这类问题。具体而言,我们通过在计划中修复条件分支的语义来限制搜索空间,我们通过指定知识库部分的相对相关性来指导搜索,并通过允许它直接访问编码代理的知识来将学习算法集成到代理体系结构中主动逻辑。我们报告实验,表明这些延伸导致了明显更好的学习结果。

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