ROAIJan 17, 2019

Interactive Plan Explicability in Human-Robot Teaming

arXiv:1901.05642v127 citations
Originality Incremental advance
AI Analysis

This addresses the need for more efficient and safer human-robot teaming in sequential domains, though it is incremental as it builds on existing plan explicability concepts.

The paper tackles the problem of human-robot cooperation by extending plan explicability to interactive settings where human and robot behaviors influence each other, termed Interactive Plan Explicability, and finds that plans generated with this measure have explicability scores comparable to human plans and better than baseline plans, implying better alignment with human expectations.

Human-robot teaming is one of the most important applications of artificial intelligence in the fast-growing field of robotics. For effective teaming, a robot must not only maintain a behavioral model of its human teammates to project the team status, but also be aware that its human teammates' expectation of itself. Being aware of the human teammates' expectation leads to robot behaviors that better align with human expectation, thus facilitating more efficient and potentially safer teams. Our work addresses the problem of human-robot cooperation with the consideration of such teammate models in sequential domains by leveraging the concept of plan explicability. In plan explicability, however, the human is considered solely as an observer. In this paper, we extend plan explicability to consider interactive settings where human and robot behaviors can influence each other. We term this new measure as Interactive Plan Explicability. We compare the joint plan generated with the consideration of this measure using the fast forward planner (FF) with the plan created by FF without such consideration, as well as the plan created with actual human subjects. Results indicate that the explicability score of plans generated by our algorithm is comparable to the human plan, and better than the plan created by FF without considering the measure, implying that the plans created by our algorithms align better with expected joint plans of the human during execution. This can lead to more efficient collaboration in practice.

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