Nonuniform Reductions and NP-Completeness
John M. Hitchcock, Hadi Shafei

TL;DR
This paper explores the power and limitations of nonuniform reductions in establishing NP-completeness, revealing separations between uniform and nonuniform notions under various hypotheses.
Contribution
It provides new separations and bounds between uniform and nonuniform NP-completeness, highlighting the impact of advice size and reduction type.
Findings
Nonuniform many-one completeness can differ from uniform completeness.
Polynomial advice in nonuniform reductions can surpass uniform Turing reductions.
Second-query uniform reductions can be more powerful than fixed-advice nonuniform reductions.
Abstract
Nonuniformity is a central concept in computational complexity with powerful connections to circuit complexity and randomness. Nonuniform reductions have been used to study the isomorphism conjecture for NP and completeness for larger complexity classes. We study the power of nonuniform reductions for NP-completeness, obtaining both separations and upper bounds for nonuniform completeness vs uniform completeness in NP. Under various hypotheses, we obtain the following separations: 1. There is a set complete for NP under nonuniform many-one reductions, but not under uniform many-one reductions. This is true even with a single bit of nonuniform advice. 2. There is a set complete for NP under nonuniform many-one reductions with polynomial-size advice, but not under uniform Turing reductions. That is, polynomial nonuniformity is stronger than a polynomial number of queries. 3. For…
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