IEEE Access (Jan 2021)

A Novel Hierarchical Deep Matrix Completion Method

  • Yaru Chen,
  • Xiaohong Gu,
  • Conghua Zhou,
  • Xiaolong Zhu,
  • Yi Jiang,
  • John Kingsley Arthur,
  • Eric Appiah Mantey,
  • Ernest Domanaanmwi Ganaa

DOI
https://doi.org/10.1109/ACCESS.2021.3049297
Journal volume & issue
Vol. 9
pp. 7908 – 7920

Abstract

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The matrix completion technique based on matrix factorization for recovering missing items is widely used in collaborative filtering, image restoration, and other applications. We proposed a new matrix completion model called hierarchical deep matrix completion (HDMC), where we assume that the variables lie in hierarchically organized groups. HDMC explicitly expresses either shallow or high-level hierarchical structures, such as taxonomy trees, by embedding a series of so-called structured sparsity penalties in a framework to encourage hierarchical relations between compact representations and reconstructed data. Moreover, HDMC considers the group-level sparsity of neurons in a neural network to obtain a pruning effect and compact architecture by enhancing the relevance of within-group neurons while neglecting the between-group neurons. Since the optimization of HDMC is a nonconvex problem, to avoid converting the framework of the HDMC models into separate optimized formulations, we unify a generic optimization by applying a smoothing proximal gradient strategy in dual space. HDMC is compared with state-of-the-art matrix completion methods on applications with simulated data, MRI image datasets, and gene expression datasets. The experimental results verify that HDMC achieves higher matrix completion accuracy.

Keywords