Symmetry (Mar 2024)

Hierarchical Object Part Learning Using Deep <i>L<sub>p</sub></i> Smooth Symmetric Non-Negative Matrix Factorization

  • Shunli Li,
  • Chunli Song,
  • Linzhang Lu,
  • Zhen Chen

DOI
https://doi.org/10.3390/sym16030312
Journal volume & issue
Vol. 16, no. 3
p. 312

Abstract

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Nowadays, deep representations have gained significant attention due to their outstanding performance in a wide range of tasks. However, the interpretability of deep representations in specific applications poses a significant challenge. For instances where the generated quantity matrices exhibit symmetry, this paper introduces a variant of deep matrix factorization (deep MF) called deep Lp smooth symmetric non-negative matrix factorization (DSSNMF), which aims to improve the extraction of clustering structures inherent in complex hierarchical and graphical representations in high-dimensional datasets by improving the sparsity of the factor matrices. We successfully applied DSSNMF to synthetic datasets as well as datasets related to post-traumatic stress disorder (PTSD) to extract several hierarchical communities. Specifically, we identified non-disjoint communities within the partial correlation networks of PTSD psychiatric symptoms, resulting in highly meaningful clinical interpretations. Numerical experiments demonstrate the promising applications of DSSNMF in fields like network analysis and medicine.

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