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Threshold machines are Turing machines whose acceptance is determined by what portion of the machine's computation paths are accepting paths. Probabilistic machines are Turing machines whose acceptance is determined by the probability weight of the machine's accepting computation paths. In 1975, Simon proved that for unbounded-error polynomial-time machines these two notions yield the same class, PP\@. Perhaps because Simon's result seemed to collapse the threshold and probabilistic modes of computation, the relationship between threshold and probabilistic computing for the case of bounded error has remained unexplored. In this paper, we compare the bounded-error probabilistic class BPP with the analogous threshold class, , and, more generally, we study the structural properties of. We prove that BPP₀ₓ₇ contains both ^ and ^ NP and that BPP₀ₓ₇ is contained in ^{ ₂ᵖ}, BPP^NP, and PP\@. We conclude that, unless the polynomial hierarchy collapses, bounded-error threshold computation is strictly more powerful than bounded-error probabilistic computation. We also consider the natural notion of secure access to a database: an adversary who watches the queries should gain no information about the input other than perhaps its length. We show for both and that if there is any database for which this formalization of security differs from the security given by oblivious database access, then \@. It follows that if any set lacking small circuits can be securely accepted, then.
Han et al. (Sat,) studied this question.
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