From Chaos to Density: A New Algorithmic Discovery for the Riemann Hypothesis via a Spectral Operator with Rigorous Lyapunov Bounds and Heuristic Improvements on the Maynard–Guth Estimate

Read the full article See related articles

Listed in

This article is not in any list yet, why not save it to one of your lists.
Log in to save this article

Abstract

We present an algorithmic and heuristic solution to zero-density problems in analytic number theory, combining spectral, dynamical, and fractal techniques for the distribution of nontrivial zeros of the Riemann zeta function. From the Maynard–Guth zero-density theorem, the current best bound N(σ, T) ≪ T30(1−σ)/13+o(1), we construct a chaotic operator Ox from the Riemann–von Mangoldt formula, motivated by the Hilbert–Pólya perspective. This operator captures the microscopic fluctuations of the zeros through a logarithmic differential term perturbed by the arithmetic signal arg ζ(1/2+it). By analyzing the phase flow of Ox and computing effective Lyapunov exponents, we obtain a dynamical estimate of zero-density decay in the critical strip. Numerical simulations of the chaotic evolution give a negative Lyapunov exponent λeff ≈ −0.7, leading to the heuristic bound N(σ, T) ≪ T1.7+o(1), which improves upon the Maynard–Guth exponent 30/13 ≈ 2.3077. This is a natural consequence of the contraction behavior of the chaotic operator, interpreted as a “chaotic filtration” mechanism that confines the dynamics and suppresses zero density. In addition to this heuristic improvement, our approach reveals a deep relationship between the fractal and bifurcation structures generated by Ox and the local arithmetic behavior of the Riemann zeta function. This spectral-dynamical approach offers a new algorithmic route for studying zero-density phenomena and suggests further improvements through more sophisticated spectral perturbations.

Article activity feed