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.
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