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Michael K. Ng

Researcher at University of Hong Kong

Publications -  658
Citations -  24376

Michael K. Ng is an academic researcher from University of Hong Kong. The author has contributed to research in topics: Cluster analysis & Computer science. The author has an hindex of 72, co-authored 608 publications receiving 20492 citations. Previous affiliations of Michael K. Ng include The Chinese University of Hong Kong & Vanderbilt University.

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Fastiterative methods for least squares estimations

TL;DR: The proposed circulant preconditioners are derived from the spectral property of the given stationary process and can be modified to suit the applications of recursive least squares computations with the proper use of sliding window method arising in signal processing applications.
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A parallel-in-time two-sided preconditioning for all-at-once system from a non-local evolutionary equation with weakly singular kernel

TL;DR: In this article, a two-sided preconditioner is constructed by replacing the variable diffusion coefficients with a constant coefficient to obtain a constant-coefficient all-at-once matrix.
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A discriminative and sparse topic model for image classification and annotation

TL;DR: Experimental results demonstrate that the proposed DSTM provides the discrimination ability in classification and annotation, and its performance is better than the other testing methods for LabelMe, UIUC, NUS-WIDE and PascalVOC07 images.

Transductive Multi-Label Learning via Alpha Matting

TL;DR: Empirical studies on real-world multi- label learning tasks show that T can effectively make use of unlabeled data information to achieve performance as good as existing state-of-the-art multi-label learning algorithms.
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Efficient Preconditioning for Time Fractional Diffusion Inverse Source Problems

TL;DR: An inverse problem with quasi-boundary value regularization for recovering a source term of the time fractional diffusion equations from the final observation data is considered.