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Learning High-Level Planning from Text

机译:从文字中学习高级计划

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摘要

Comprehending action preconditions and effects is an essential step in modeling the dynamics of the world. In this paper, we express the semantics of precondition relations extracted from text in terms of planning operations. The challenge of modeling this connection is to ground language at the level of relations. This type of grounding enables us to create high-level plans based on language abstractions. Our model jointly learns to predict precondition relations from text and to perform high-level planning guided by those relations. We implement this idea in the reinforcement learning framework using feedback automatically obtained from plan execution attempts. When applied to a complex virtual world and text describing that world, our relation extraction technique performs on par with a supervised baseline, yielding an F-measure of 66% compared to the baseline's 65%. Additionally, we show that a high-level planner utilizing these extracted relations significantly outperforms a strong, text unaware baseline - successfully completing 80% of planning tasks as compared to 69% for the baseline.
机译:理解动作的先决条件和效果是建模世界动态的必不可少的步骤。在本文中,我们根据计划操作来表达从文本中提取的前提条件关系的语义。对这种连接进行建模的挑战在于在关系级别上使用基础语言。这种类型的基础使我们能够基于语言抽象来创建高级计划。我们的模型共同学习预测文本中的前提条件关系,并在这些关系的指导下执行高级计划。我们使用从计划执行尝试中自动获得的反馈,在强化学习框架中实现了这一想法。当应用于复杂的虚拟世界和描述该世界的文本时,我们的关系提取技术的表现与受监督的基准相当,与基准的65%相比,F测度为66%。此外,我们表明,利用这些提取的关系的高级计划者明显优于不带文字的强大基线-成功完成了80%的计划任务,而基线完成了69%。

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