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Zhi-Hua Zhou

Researcher at Nanjing University

Publications -  633
Citations -  64307

Zhi-Hua Zhou is an academic researcher from Nanjing University. The author has contributed to research in topics: Semi-supervised learning & Artificial neural network. The author has an hindex of 102, co-authored 626 publications receiving 52850 citations. Previous affiliations of Zhi-Hua Zhou include Michigan State University & Tokyo Institute of Technology.

Papers
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Proceedings ArticleDOI

Pose invariant face recognition

TL;DR: A novel neural network architecture is described, which can recognize human faces with any view in a certain viewing angle range (from left 30 degrees to right 30 degrees out of plane rotation).
Journal ArticleDOI

Semisupervised Regression with Cotraining-Style Algorithms

TL;DR: A cotraining-style semisupervised regression algorithm, that is, COREG, is proposed, which uses two regressors, each labels the unlabeled data for the other regressor, where the confidence in labeling an unlabeling example is estimated through the amount of reduction in mean squared error over the labeled neighborhood of that example.
Proceedings Article

Semi-supervised learning with very few labeled training examples

TL;DR: By taking advantages of the correlations between the views using canonical component analysis, the proposed method can perform semi-supervised learning with only one labeled training example.
Journal ArticleDOI

Spectral Clustering on Multiple Manifolds

TL;DR: This paper proposes a new method, called spectral multi-manifold clustering (SMMC), which is able to handle intersections, and demonstrates the promising performance of this method on synthetic as well as real datasets.
Proceedings Article

Genetic algorithm based selective neural network ensemble

TL;DR: An approach named GASEN is proposed, which trains several individual neural networks and then employs genetic algorithm to select an optimum subset of individual networks to constitute an ensemble, which has preferable performance in generating ensembles with strong generalization ability in relatively small computational cost.