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Feedback-based reasoning process for behavior selection during long-term interaction

机译:基于反馈的行为选择在长期交互​​期间的推理过程

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This paper focused on the effectiveness of the feedback-based reasoning process for managing long-term interaction. We propose the interaction process based on self-reference that a robotic system iteratively evaluates the status and the feedback during turn-based interaction. The result of reasoning process in the previous step is added to input queues, which also generates queries to reasoning to next behaviors. Assuming that reasoning process determines appropriate behaviors, we testified the effects of feedback-based reasoning in two different examples.
机译:本文集中于基于反馈的推理过程管理长期互动的有效性。我们提出了基于自我参考的交互过程,即机器人系统迭代地评估基于转向的交互期间的状态和反馈。在前一步中的推理过程结果被添加到输入队列中,这也会生成要推理到下一个行为的查询。假设推理过程决定了适当的行为,我们在两个不同的例子中作证了基于反馈的推理的影响。

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