Using Alternative Suboptimality Bounds in Heuristic Search.

ICAPS'13: Proceedings of the Twenty-Third International Conference on International Conference on Automated Planning and Scheduling(2013)

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摘要
Most bounded suboptimal algorithms in the search literature have been developed so as to be ε-admissible. This means that the solutions found by these algorithms are guaranteed to be no more than a factor of (1 + ε) greater than optimal. However, this is not the only possible form of suboptimality bounding. For example, another possible suboptimality guarantee is that of additive bounding , which requires that the cost of the solution found is no more than the cost of the optimal solution plus a constant γ. In this work, we consider the problem of developing algorithms so as to satisfy a given, and arbitrary, suboptimality requirement. To do so, we develop a theoretical framework which can be used to construct algorithms for a large class of possible suboptimality paradigms. We then use the framework to develop additively bounded algorithms, and show that in practice these new algorithms effectively trade-off additive solution suboptimality for runtime.
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