TL;DR
This paper investigates the complexity of problems solvable with polynomial-time algorithms accessing NP or QMA oracles, providing new bounds based on the structure of oracle query graphs and connecting these to physical problems like APX-SIM.
Contribution
It introduces bounds on $P^C$ computations with query graphs of bounded separator number and unifies frameworks for embedding such computations into APX-SIM instances.
Findings
Bounded separator number query graphs lead to specific complexity bounds.
Unified framework for embedding $P^C$ into APX-SIM instances.
Polynomial compression implies fewer oracle queries for NP problems.
Abstract
We study the complexity of problems solvable in deterministic polynomial time with access to an NP or Quantum Merlin-Arthur (QMA)-oracle, such as and , respectively. The former allows one to classify problems more finely than the Polynomial-Time Hierarchy (PH), whereas the latter characterizes physically motivated problems such as Approximate Simulation (APX-SIM) [Ambainis, CCC 2014]. In this area, a central role has been played by the classes and , defined identically to and , except that only logarithmically many oracle queries are allowed. Here, [Gottlob, FOCS 1993] showed that if the adaptive queries made by a machine have a "query graph" which is a tree, then this computation can be simulated in . In this work, we first show that for any verification class…
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Videos
On polynomially many queries to NP or QMA oracles· youtube
