On Randomized versus Deterministic Computation ? Zpp a = Exptime a = Exptime (= Dtime(2 Poly )). Furthermore, for All the Sets M : M Ur a () M 2 Exptime

نویسندگان

  • Marek Karpinski
  • Rutger Verbeek
چکیده

In contrast to deterministic or nondeterministic computation, it is a fundamental open problem in randomized computation how to separate diierent ran-domized time classes (at this point we do not even know how to separate linear randomized time from O(n log n) randomized time) or how to compare them relative to corresponding deterministic time classes. In other words we are far from understanding the power of random coin tosses in the computation, and the possible ways of simulating them deterministically. In this paper we study the relative power of linear and polynomial randomized time compared with exponential deterministic time. Surprisingly, we are able to construct an oracle A such that exponential time (with or without the oracle A) is simulated by linear time Las Vegas algorithms using the oracle A. For Las Vegas polynomial time (ZPP) this will mean the following equalities of the time classes: (UR being unfaithful polynomial random reduction, c.f. Jo 90]). Thus A is UR complete for EXPTIME, but interestingly not NP{hard under (de-terministic) polynomial reduction unless EXPTIME = NEXPTIME. We also prove, for the rst time, that randomized reductions are exponentially more powerful than deterministic or nondeterministic ones (cf. AM 77]). Moreover, a set B is constructed such that Monte Carlo polynomial time (BPP) under the oracle B is exponentially more powerful than deterministic time with nondeterministic oracles, more precisely: BPP B = 2EXPTIME B = 2EXPTIME (= DTIME(2 poly) NTIME(n)). This strengthens considerably a result of Stockmeyer St 85] about the polynomial time hierarchy that for some decidable oracle B, BPP B 6 6 2P B. Under our oracle BPP B is exponentially more powerful than 2P B , and B does not add any power to 2EXPTIME. One of the consequences of this result is that under oracle B, 2EXPTIME has polynomial size circuits.

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تاریخ انتشار 1993