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MAXCUT QAOA performance guarantees for p >1

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arxiv 2010.11209 v2 pith:DL7HEUP2 submitted 2020-10-21 quant-ph

MAXCUT QAOA performance guarantees for p >1

classification quant-ph
keywords graphsboundcaseworstapproximationratioregularconjecture
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We obtain worst case performance guarantees for $p=2$ and $3$ QAOA for MAXCUT on uniform 3-regular graphs. Previous work by Farhi et al obtained a lower bound on the approximation ratio of $0.692$ for $p=1$. We find a lower bound of $0.7559$ for $p=2$, where worst case graphs are those with no cycles $\leq 5$. This bound holds for any 3 regular graph evaluated at particular fixed parameters. We conjecture a hierarchy for all $p$, where worst case graphs have with no cycles $\leq 2p+1$. Under this conjecture, the approximation ratio is at least $0.7924$ for all 3 regular graphs and $p=3$. In addition, using a simple indistinguishability argument we find an upper bound on the worst case approximation ratio for all $p$, which indicates classes of graphs for which there can be no quantum advantage for at least $p<6$.

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