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Changshui Zhang

Researcher at Tsinghua University

Publications -  509
Citations -  22100

Changshui Zhang is an academic researcher from Tsinghua University. The author has contributed to research in topics: Semi-supervised learning & Support vector machine. The author has an hindex of 67, co-authored 493 publications receiving 18471 citations. Previous affiliations of Changshui Zhang include Microsoft & Cornell University.

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Proceedings ArticleDOI

Learning Efficient Convolutional Networks through Network Slimming

TL;DR: In this article, the authors proposed a network slimming method for CNNs to simultaneously reduce the model size, decrease the run-time memory footprint, and lower the number of computing operations without compromising accuracy.
Journal ArticleDOI

Frequency Recognition Based on Canonical Correlation Analysis for SSVEP-Based BCIs

TL;DR: A recognition approach is proposed based on the extracted frequency features for an SSVEP-based brain computer interface (BCI) that were higher than those using a widely used fast Fourier transform (FFT)-based spectrum estimation method.
Posted Content

Learning Efficient Convolutional Networks through Network Slimming

TL;DR: The approach is called network slimming, which takes wide and large networks as input models, but during training insignificant channels are automatically identified and pruned afterwards, yielding thin and compact models with comparable accuracy.
Journal ArticleDOI

Label Propagation through Linear Neighborhoods

TL;DR: A novel graph-based semi supervised learning approach is proposed based on a linear neighborhood model, which assumes that each data point can be linearly reconstructed from its neighborhood, and can propagate the labels from the labeled points to the whole data set using these linear neighborhoods with sufficient smoothness.
Journal ArticleDOI

A bayesian network approach to traffic flow forecasting

TL;DR: Comprehensive experiments on urban vehicular traffic flow data of Beijing and comparisons with several other methods show that the Bayesian network is a very promising and effective approach for traffic flow modeling and forecasting, both for complete data and incomplete data.