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Kernel Dynamics under Path Entropy Maximization

arXiv:2603.278805.92 citationsh-index: 2
Predicted impact top 95% in LG · last 90 daysOriginality Incremental advance
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This is a highly speculative theoretical framework that aims to unify kernel methods, information geometry, and thermodynamics, but lacks empirical validation or immediate practical impact.

The paper proposes a variational framework where kernel functions are treated as dynamical variables subject to path entropy maximization, deriving a thermodynamic bound on kernel change and suggesting connections to neural tangent kernel evolution and renormalization group flow. No concrete numerical results are provided.

We propose a variational framework in which the kernel function k : X x X -> R, interpreted as the foundational object encoding what distinctions an agent can represent, is treated as a dynamical variable subject to path entropy maximization (Maximum Caliber, MaxCal). Each kernel defines a representational structure over which an information geometry on probability space may be analyzed; a trajectory through kernel space therefore corresponds to a trajectory through a family of effective geometries, making the optimization landscape endogenous to its own traversal. We formulate fixed-point conditions for self-consistent kernels, propose renormalization group (RG) flow as a structured special case, and suggest neural tangent kernel (NTK) evolution during deep network training as a candidate empirical instantiation. Under explicit information-thermodynamic assumptions, the work required for kernel change is bounded below by delta W >= k_B T delta I_k, where delta I_k is the mutual information newly unlocked by the updated kernel. In this view, stable fixed points of MaxCal over kernels correspond to self-reinforcing distinction structures, with biological niches, scientific paradigms, and craft mastery offered as conjectural interpretations. We situate the framework relative to assembly theory and the MaxCal literature, separate formal results from structured correspondences and conjectural bridges, and pose six open questions that make the program empirically and mathematically testable.

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