Estimating the Probability of Meeting a Deadline in Hierarchical Plans
March 04, 2015 Β· Declared Dead Β· π International Joint Conference on Artificial Intelligence
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Authors
Liat Cohen, Solomon Eyal Shimony, Gera Weiss
arXiv ID
1503.01327
Category
cs.AI: Artificial Intelligence
Citations
12
Venue
International Joint Conference on Artificial Intelligence
Last Checked
3 months ago
Abstract
Given a hierarchical plan (or schedule) with uncertain task times, we propose a deterministic polynomial (time and memory) algorithm for estimating the probability that its meets a deadline, or, alternately, that its {\em makespan} is less than a given duration. Approximation is needed as it is known that this problem is NP-hard even for sequential plans (just, a sum of random variables). In addition, we show two new complexity results: (1) Counting the number of events that do not cross deadline is \#P-hard; (2)~Computing the expected makespan of a hierarchical plan is NP-hard. For the proposed approximation algorithm, we establish formal approximation bounds and show that the time and memory complexities grow polynomially with the required accuracy, the number of nodes in the plan, and with the size of the support of the random variables that represent the durations of the primitive tasks. We examine these approximation bounds empirically and demonstrate, using task networks taken from the literature, how our scheme outperforms sampling techniques and exact computation in terms of accuracy and run-time. As the empirical data shows much better error bounds than guaranteed, we also suggest a method for tightening the bounds in some cases.
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