On the Computational Complexity of Approximating Distributions by Probabilistic Automata (Part 2)
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45 If we divide the path set for u i into 1 and 1 , deened as before, then if we let M be an arbitrary canonical matrix, we can show the following
منابع مشابه
On the Computational Complexity of Approximating Distributions by Probabilistic Automata
45 If we divide the path set for u i into 1 and 1 , deened as before, then if we let M be an arbitrary canonical matrix, we can show the following
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تاریخ انتشار 1990