A Closed-Form Adaptive-Landmark Kernel for Certified Point-Cloud and Graph Classification

Abstract

We introduce PALACE (Persistence Adaptive-Landmark Analytic Classification Engine), the data-adaptive companion to PLACE, paying a small cross-validation tier on three knobs (budget, radii, bandwidth; ≤ 5 choices each). A cover-theoretic core (Lebesgue-number criterion on the landmark cover) yields four closed-form guarantees. (i) A structural lower distortion bound λ(τ;) on Dn under cross-diagram non-interference, with a (D/L)2 budget reduction over the uniform grid when diagrams concentrate. (ii) Equal weights wk = K-1/2 maximizing λ, and farthest-point-sampling positions 2-approximating the optimal k-center covering radius; both derived from training labels alone, no gradient training. (iii) A kernel-RKHS classification rate O((k-1)K/(γm)) with binary necessity threshold m = ( K/γ) from a matching Le Cam lower bound, and a closed-form filtration-selection rule. The kernel-Mahalanobis margin Mah is the strongest closed-form ranker across the chemical-graph pool (mean Spearman ≈ +0.60); the isotropic surrogate γ/K admits a selection-consistency rate, and λ from (i) provides an independent data-level signal (positive on COX2 and PTC). (iv) A per-prediction certificate, in non-asymptotic Pinelis and asymptotic Gaussian forms, with no calibration split. Empirically, PALACE is the strongest closed-form diagram-based method on Orbit5k (91.3 1.0\%, matching Persformer), leads every diagram-based competitor on COX2 and MUTAG, and is competitive on DHFR (within 1 pp of ECP). At 8× domain inflation, adaptive placement maintains 94\% while the uniform grid collapses to chance (25\% on 4-class data).

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