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Collaborative Models for Referring Expression Generation in Situated Dialogue

机译:在位于对话中引用表达生成的协作模型

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In situated dialogue with artificial agents (e.g., robots), although a human and an agent are co-present, the agent's representation and the human's representation of the shared environment are significantly mismatched. Because of this misalignment, our previous work has shown that when the agent applies traditional approaches to generate referring expressions for describing target objects with minimum descriptions, the intended objects often cannot be correctly identified by the human. To address this problem, motivated by collaborative behaviors in human referential communication, we have developed two collaborative models - an episodic model and an installment model - for referring expression generation. Both models, instead of generating a single referring expression to describe a target object as in the previous work, generate multiple small expressions that lead to the target object with the goal of minimizing the collaborative effort. In particular, our installment model incorporates human feedback in a reinforcement learning framework to learn the optimal generation strategies. Our empirical results have shown that the episodic model and the installment model outperform previous non-collaborative models with an absolute gain of 6% and 21% respectively.
机译:在与人工代理人(例如,机器人)的位于对话中,虽然人和代理人都是共同的,但代理人的代表和人类的共同环境的代表性是显着不匹配的。由于这种错位,我们以前的工作表明,当代理应用传统方法以生成用于描述具有最小描述的目标对象的引用表达式时,人类通常不能正确地识别预期的对象。为了解决这个问题,通过人类参考通信中的协作行为的动机,我们开发了两个协作模型 - 一个eoiicodic模型和分期模型 - 用于引用表达式。两个模型,而不是生成单个引用表达式来描述与上一个工作中的目标对象,生成导致目标对象的多个小表达式,其目标是最小化协作工作。特别是,我们的分期模型在加强学习框架中纳入了人的反馈,以了解最佳的发电策略。我们的经验结果表明,ePiSodic模型和分期模型优于以前的非协同模型,分别为6%和21%。

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