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Neumann eigenmaps for landmark embedding

10 February 2025
Shashank Sule
Wojciech Czaja
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Abstract

We present Neumann eigenmaps (NeuMaps), a novel approach for enhancing the standard diffusion map embedding using landmarks, i.e distinguished samples within the dataset. By interpreting these landmarks as a subgraph of the larger data graph, NeuMaps are obtained via the eigendecomposition of a renormalized Neumann Laplacian. We show that NeuMaps offer two key advantages: (1) they provide a computationally efficient embedding that accurately recovers the diffusion distance associated with the reflecting random walk on the subgraph, and (2) they naturally incorporate the Nyström extension within the diffusion map framework through the discrete Neumann boundary condition. Through examples in digit classification and molecular dynamics, we demonstrate that NeuMaps not only improve upon existing landmark-based embedding methods but also enhance the stability of diffusion map embeddings to the removal of highly significant points.

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@article{sule2025_2502.06689,
  title={ Neumann eigenmaps for landmark embedding },
  author={ Shashank Sule and Wojciech Czaja },
  journal={arXiv preprint arXiv:2502.06689},
  year={ 2025 }
}
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