Spectral Kernel Dynamics via Maximum Caliber: Fixed Points, Geodesics, and Phase Transitions

arXiv cs.RO / 4/14/2026

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Key Points

  • The paper formulates a closed-form geometric functional for kernel dynamics on finite graphs by applying the Maximum Caliber (MaxCal) variational principle to the Laplacian eigenbasis spectral transfer function h(λ).
  • It shows that the MaxCal stationarity condition splits into N independent 1D problems, yielding self-consistent (fixed-point) kernels via exponential tilting and providing explicit expressions for Fisher–Rao geodesics and a diagonal Hessian stability criterion.
  • The work establishes structural properties of the spectral kernel space, including an l^2_+ isometry, and interprets the approach through a guiding analogy to Einstein’s field equations rather than claiming an established equivalence.
  • It introduces spectral entropy H[h_t] as an O(N) computable early-warning signal for network-structural phase transitions, supported by numerical verification on a small path graph using the open-source kernelcal library.

Abstract

We derive a closed-form geometric functional for kernel dynamics on finite graphs by applying the Maximum Caliber (MaxCal) variational principle to the spectral transfer function h(lambda) of the graph Laplacian eigenbasis. The main result is that the MaxCal stationarity condition decouples into N one-dimensional problems with explicit solution: h*(lambda_l) = h_0(lambda_l) exp(-1 - T_l[h*]), yielding self-consistent (fixed-point) kernels via exponential tilting (Corollary 1), log-linear Fisher-Rao geodesics (Corollary 2), a diagonal Hessian stability criterion (Corollary 3), and an l^2_+ isometry for the spectral kernel space (Proposition 3). The spectral entropy H[h_t] provides a computable O(N) early-warning signal for network-structural phase transitions (Remark 7). All claims are numerically verified on the path graph P_8 with a Gaussian mutual-information source, using the open-source kernelcal library. The framework is grounded in a structural analogy with Einstein's field equations, used as a guiding template rather than an established equivalence; explicit limits are stated in Section 6.