• DocumentCode
    2834237
  • Title

    The Program-Enumeration Bottleneck in Average-Case Complexity Theory

  • Author

    Trevisan, Luca

  • Author_Institution
    Stanford Univ., Stanford, CA, USA
  • fYear
    2010
  • fDate
    9-12 June 2010
  • Firstpage
    88
  • Lastpage
    95
  • Abstract
    Three fundamental results of Levin involve algorithms or reductions whose running time is exponential in the length of certain programs. We study the question of whether such dependency can be made polynomial. 1) Levin\´s "optimal search algorithm" performs at most a constant factor more slowly than any other fixed algorithm. The constant, however, is exponential in the length of the competing algorithm. We note that the running time of a universal search cannot be made "fully polynomial" (that is, the relation between slowdown and program length cannot be made polynomial), unless P=NP. 2) Levin\´s "universal one-way function" result has the following structure: there is a polynomial time computable function fLevin such that if there is a polynomial time computable adversary A that inverts fLevin on an inverse polynomial fraction of inputs, then for every polynomial time computable function g there also is a polynomial time adversary Ag that inverts g on an inverse polynomial fraction of inputs. Unfortunately, again the running time of Ag depends exponentially on the bit length of the program that computes g in polynomial time. We show that a fully polynomial uniform reduction from an arbitrary one-way function to a specific one-way function is not possible relative to an oracle that we construct, and so no "universal one-way function" can have a fully polynomial security analysis via relativizing techniques. 3) Levin\´s completeness result for distributional NP problems implies that if a specific problem in NP is easy on average under the uniform distribution, then every language L in NP is also easy on average under any polynomial time computable distribution. The running time of the implied algorithm for L, however, depends exponentially on the bit length of the non-deterministic polynomial time Turing machine that decides L. We show that if a completeness result for distributional NP can be proved via a "fully uniform"- - and "fully polynomial" time reduction, then there is a worst-case to average-case reduction for NP-complete problems. In particular, this means that a fully polynomial completeness result for distributional NP is impossible, even via randomized truth-table reductions, unless the polynomial hierarchy collapses.
  • Keywords
    Turing machines; computational complexity; Levin optimal search algorithm; average-case complexity theory; distributional NP hard problems; inverse polynomial fraction; nondeterministic polynomial time Turing machine; polynomial time computable function; program enumeration; randomized truth-table reductions; universal one-way function; Complexity theory; Computational complexity; Distributed computing; NP-complete problem; Polynomials; Search problems; Security; Turing machines; Average-case Complexity; Universal Search;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Computational Complexity (CCC), 2010 IEEE 25th Annual Conference on
  • Conference_Location
    Cambridge, MA
  • ISSN
    1093-0159
  • Print_ISBN
    978-1-4244-7214-7
  • Electronic_ISBN
    1093-0159
  • Type

    conf

  • DOI
    10.1109/CCC.2010.18
  • Filename
    5497896