Teaching and executing verb phrases

D. Hewlett, Thomas J. Walsh, P. Cohen
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引用次数: 7

Abstract

This paper describes a framework for an agent to learn models of verb-phrase meanings from human teachers and combine these models with environmental dynamics to enact verb commands. The framework extends prior work in apprenticeship learning and leverages recent advancements in modeling activities and planning in domains with multiple objects. We show how to both learn a verb model as a relational finite state machine and how to turn this model into reward and heuristic functions that can then be composed with an MDP model of an environment. The resulting “combined model” can then be efficiently searched by a planner to enact a verb command in this environment. Our experiments in simulated robot domains show this framework can be used to quickly teach verb commands and improves over the current state of the art method.
教授和执行动词短语
本文描述了一个智能体从人类教师那里学习动词-短语意义模型的框架,并将这些模型与环境动态相结合来制定动词命令。该框架扩展了之前在学徒学习方面的工作,并利用了在具有多对象的领域中建模活动和计划方面的最新进展。我们将展示如何将动词模型作为关系有限状态机学习,以及如何将该模型转换为奖励和启发式函数,然后将其与环境的MDP模型组合在一起。然后,计划器可以有效地搜索生成的“组合模型”,以便在此环境中执行动词命令。我们在模拟机器人领域的实验表明,该框架可用于快速教授动词命令,并改进了当前的技术方法。
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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