Improved Randomized Approximation of Hard Universality and Emptiness Problems
We build on recent research on polynomial randomized approximation (PRAX) algorithms for the hard problems of NFA universality and NFA equivalence. Loosely speaking, PRAX algorithms use sampling of infinite domains within any desired accuracy $\delta$. In the spirit of experimental mathematics, we e...
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Zusammenfassung: | We build on recent research on polynomial randomized approximation (PRAX)
algorithms for the hard problems of NFA universality and NFA equivalence.
Loosely speaking, PRAX algorithms use sampling of infinite domains within any
desired accuracy $\delta$. In the spirit of experimental mathematics, we extend
the concept of PRAX algorithms to be applicable to the emptiness and
universality problems in any domain whose instances admit a tractable
distribution as defined in this paper. A technical result here is that a linear
(w.r.t. $1/\delta$) number of samples is sufficient, as opposed to the
quadratic number of samples in previous papers. We show how the improved and
generalized PRAX algorithms apply to universality and emptiness problems in
various domains: ordinary automata, tautology testing of propositions, 2D
automata, and to solution sets of certain Diophantine equations. |
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DOI: | 10.48550/arxiv.2403.08707 |