Accelerate Vector Diffusion Maps by Landmarks

arXiv stat.ML / 3/24/2026

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Key Points

  • The paper introduces LA-VDM (Landmark Accelerated Vector Diffusion Maps), a landmark-constrained algorithm designed to speed up the Vector Diffusion Maps framework based on the Graph Connection Laplacian (GCL).
  • LA-VDM uses a novel two-stage normalization to handle nonuniform sampling densities in both the full data and the chosen landmark sets.
  • Under a manifold model with frame bundle structure, the authors prove that landmark-constrained diffusion can asymptotically recover parallel transport and that LA-VDM converges to the connection Laplacian.
  • Experiments on simulated data and an application to nonlocal image denoising demonstrate LA-VDM’s performance and accuracy advantages.

Abstract

We propose a landmark-constrained algorithm, LA-VDM (Landmark Accelerated Vector Diffusion Maps), to accelerate the Vector Diffusion Maps (VDM) framework built upon the Graph Connection Laplacian (GCL), which captures pairwise connection relationships within complex datasets. LA-VDM introduces a novel two-stage normalization that effectively address nonuniform sampling densities in both the data and the landmark sets. Under a manifold model with the frame bundle structure, we show that we can accurately recover the parallel transport with landmark-constrained diffusion from a point cloud, and hence asymptotically LA-VDM converges to the connection Laplacian. The performance and accuracy of LA-VDM are demonstrated through experiments on simulated datasets and an application to nonlocal image denoising.