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Improving Natural Language Interaction with Robots Using Advice

机译:使用建议改善与机器人的自然语言交互

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Over the last few years, there has been growing interest in learning models for physically grounded language understanding tasks, such as the popular blocks world domain. These works typically view this problem as a single-step process, in which a human operator gives an instruction and an automated agent is evaluated on its ability to execute it. In this paper we take the first step towards increasing the bandwidth of this interaction, and suggest a protocol for including advice, high-level observations about the task, which can help constrain the agents prediction. We evaluate our approach on the blocks world task, and show that even simple advice can help lead to significant performance improvements. To help reduce the effort involved in supplying the advice, we also explore model self-generated advice which can still improve results.
机译:在过去的几年中,人们对基于物理的语言理解任务(例如流行的积木世界领域)的学习模型越来越感兴趣。这些工作通常将此问题视为一个单步过程,其中,操作员会给出指令,并评估自动代理的执行能力。在本文中,我们朝着增加此交互的带宽迈出了第一步,并提出了一个协议,该协议包括建议,对任务的高级观察,这可以帮助约束代理预测。我们评估了有关块世界任务的方法,并表明即使是简单的建议也可以帮助实现显着的性能改进。为了帮助减少提供建议所涉及的工作量,我们还探索了可自动生成建议的模型,这些建议仍然可以改善结果。

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