Why Couldn't You do that? Explaining Unsolvability of Classical Planning Problems in the Presence of Plan Advice

19 Mar 2019Sarath SreedharanSiddharth SrivastavaDavid SmithSubbarao Kambhampati

Explainable planning is widely accepted as a prerequisite for autonomous agents to successfully work with humans. While there has been a lot of research on generating explanations of solutions to planning problems, explaining the absence of solutions remains an open and under-studied problem, even though such situations can be the hardest to understand or debug... (read more)

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