Was Fixing This Really That Hard? On the Complexity of Correcting HTN Domains.

AAAI(2023)

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摘要
Automated modeling assistance is indispensable to the AI planning being deployed in practice, notably in industry and other non-academic contexts. Yet, little progress has been made that goes beyond smart interfaces like programming environments. They focus on autocompletion, but lack intelligent support for guiding the modeler. As a theoretical foundation of a first step towards this direction, we study the computational complexity of correcting a flawed Hierarchical Task Network (HTN) planning domain. Specifically, a modeler provides a (white) list of plans that are supposed to be solutions, and likewise a (black) list of plans that shall not be solutions. We investigate the complexity of finding a set of (optimal or suboptimal) model corrections so that those plans are ( resp . not) solutions to the corrected model. We factor out each hardness source that contributes towards ℕℙ-hardness, including one that we deem important for many other complexity investigations that go beyond our specific context of application. All complexities range between ℕℙ and ∑ p 2 , raising the hope for efficient practical tools in the future.
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complexity
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