Comments on the holographic description of Narain theories
December 31, 2020 Β· Declared Dead Β· π Journal of High Energy Physics
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Authors
Anatoly Dymarsky, Alfred Shapere
arXiv ID
2012.15830
Category
hep-th
Cross-listed
cs.IT,
quant-ph
Citations
31
Venue
Journal of High Energy Physics
Last Checked
3 months ago
Abstract
We discuss the holographic description of Narain $U(1)^c\times U(1)^c$ conformal field theories, and their potential similarity to conventional weakly coupled gravity in the bulk, in the sense that the effective IR bulk description includes "$U(1)$ gravity" amended with additional light degrees of freedom. Starting from this picture, we formulate the hypothesis that in the large central charge limit the density of states of any Narain theory is bounded by below by the density of states of $U(1)$ gravity. This immediately implies that the maximal value of the spectral gap for primary fields is $Ξ_1=c/(2Οe)$. To test the self-consistency of this proposal, we study its implications using chiral lattice CFTs and CFTs based on quantum stabilizer codes. First we notice that the conjecture yields a new bound on quantum stabilizer codes, which is compatible with previously known bounds in the literature. We proceed to discuss the variance of the density of states, which for consistency must be vanishingly small in the large-$c$ limit. We consider ensembles of code and chiral theories and show that in both cases the density variance is exponentially small in the central charge.
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