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Neural Eigenfunctions Are Structured Representation Learners

Machine Learning 2023-12-11 v3

Abstract

This paper introduces a structured, adaptive-length deep representation called Neural Eigenmap. Unlike prior spectral methods such as Laplacian Eigenmap that operate in a nonparametric manner, Neural Eigenmap leverages NeuralEF to parametrically model eigenfunctions using a neural network. We show that, when the eigenfunction is derived from positive relations in a data augmentation setup, applying NeuralEF results in an objective function that resembles those of popular self-supervised learning methods, with an additional symmetry-breaking property that leads to \emph{structured} representations where features are ordered by importance. We demonstrate using such representations as adaptive-length codes in image retrieval systems. By truncation according to feature importance, our method requires up to 16×16\times shorter representation length than leading self-supervised learning ones to achieve similar retrieval performance. We further apply our method to graph data and report strong results on a node representation learning benchmark with more than one million nodes.

Keywords

Cite

@article{arxiv.2210.12637,
  title  = {Neural Eigenfunctions Are Structured Representation Learners},
  author = {Zhijie Deng and Jiaxin Shi and Hao Zhang and Peng Cui and Cewu Lu and Jun Zhu},
  journal= {arXiv preprint arXiv:2210.12637},
  year   = {2023}
}
R2 v1 2026-06-28T04:16:47.054Z