The metric from energy-momentum non-conservation: Generalizing Noether and completing spectral geometry
Achim Kempf

TL;DR
This paper demonstrates that a manifold's metric can be reconstructed from spectral data and resonance patterns, extending spectral geometry and providing a novel approach to quantum gravity that derives spacetime from correlators.
Contribution
It generalizes spectral geometry to include nonlinear resonance patterns and introduces a new method to determine spacetime metrics from energy-momentum non-conservation patterns.
Findings
Manifold shape can be reconstructed from spectral and resonance data.
Energy-momentum non-conservation patterns encode the metric.
Quantum gravity may emerge from correlators without explicit spacetime.
Abstract
We complete the program of spectral geometry, in the sense that we show that a manifold's shape, i.e., its metric, can be reconstructed from its resonant sound when tapped lightly, i.e., from its spectrum, -- if in addition we also record the resonances' mutual excitation pattern when the driving is strong enough to reach the nonlinear regime. Applied to spacetime, this finding yields a generalization of Noether's theorem: the specific pattern of energy-momentum non-conservation on a generic curved spacetime, encoded within the quantum field theoretic scattering matrices, is sufficient to calculate the metric. Applied to quantum gravity, this shows that the conventional dichotomy of spacetime versus matter can emerge from an underlying information-theoretic framework of only one type of quantity: abstract correlators, , that are, a priori, merely operators on tensor factors…
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Taxonomy
TopicsRelativity and Gravitational Theory · Computational Physics and Python Applications · Algebraic and Geometric Analysis
