Research Output
An online generalized eigenvalue version of Laplacian Eigenmaps for visual big data
  This paper presents a generalized incremental Laplacian Eigenmaps (GENILE), a novel online version of the Laplacian Eigenmaps, one of the most popular manifold-based dimensionality reduction techniques which solves the generalized eigenvalue problem. We evaluate the comparative performance of the manifold-based learning techniques using both artificial and real data. Specifically, two popular artificial datasets: swiss roll and s-curve datasets, are used, in addition to real MNIST digits, bank-note and heart disease datasets for testing and evaluating our novel method benchmarked against a number of standard batch-based and other manifold-based learning techniques. Preliminary experimental results demonstrate consistent improvements in the classification accuracy of the proposed method in comparison with other techniques.

  • Type:

    Article

  • Date:

    03 September 2015

  • Publication Status:

    Published

  • DOI:

    10.1016/j.neucom.2014.12.119

  • ISSN:

    0925-2312

  • Funders:

    Historic Funder (pre-Worktribe)

Citation

Malik, Z. K., Hussain, A., & Wu, J. (2016). An online generalized eigenvalue version of Laplacian Eigenmaps for visual big data. Neurocomputing, 173(2), 127-136. https://doi.org/10.1016/j.neucom.2014.12.119

Authors

Keywords

Dimensionality reduction; Generalized eigenvalue problem; Laplacian Eigenmaps; Manifold-based learning

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