Author:
Katz Michael,Sohrabi Shirin,Udrea Octavian,Winterer Dominik
Abstract
While cost-optimal planning aims at finding one best quality plan, top-k planning deals with finding a set of solutions, such that no better quality solution exists outside that set. We propose a novel iterative approach to top-k planning, exploiting any cost-optimal planner and reformulating a planning task to forbid exactly the given set of solutions. In addition, to compare to existing approaches to finding top-k solutions, we implement the K∗ algorithm in an existing PDDL planner, creating the first K∗ based solver for PDDL planning tasks. We empirically show that the iterative approach performs better for up to a large required size solution sets (thousands), while K∗ based approach excels on extremely large ones.
Publisher
Association for the Advancement of Artificial Intelligence (AAAI)
Cited by
2 articles.
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1. Plan Recognition as Probabilistic Trace Alignment;2023 5th International Conference on Process Mining (ICPM);2023-10-23
2. Anticipatory thinking in design;AI Magazine;2023-06