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Institution

China Three Gorges University

EducationYichang, China
About: China Three Gorges University is a education organization based out in Yichang, China. It is known for research contribution in the topics: Catalysis & Landslide. The organization has 11161 authors who have published 8011 publications receiving 82224 citations. The organization is also known as: Sanxia Daxue.


Papers
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Journal ArticleDOI
TL;DR: In this article, a convolutional multiple whole-profile fitting method was applied to in situ neutron diffraction profiles to elucidate changes in the density and substructure of dislocations during tempering of lath martensite steel.

40 citations

Journal ArticleDOI
TL;DR: The present HILIC technique proved to be a viable method for the analysis of aromatic amines in the environmental water samples and the retention mechanism for the analytes under the optimum conditions was determined to beA combination of adsorption, partition and ionic interactions.

40 citations

Journal ArticleDOI
TL;DR: In this article, pathways for rebaudioside D synthesis and UDP-glucose recycling were developed by coupling recombinant UDP-GLucosyltransferase UGTSL2 from Solanum lycopersicum and sucrose synthase StSUS1 from solanum tuberosum.

40 citations

Journal ArticleDOI
TL;DR: A new delay impulsive differential inequality is established, which improves and generalizes previously known criteria and several sufficient conditions are derived to guarantee the global exponential stability in Lagrange sense and exponential convergence of the state variables of the discussed delayed Cohen-Grossberg neural networks with impulses effects.

40 citations

Journal ArticleDOI
01 Jun 2019
TL;DR: A novel strategy of large-scale data classification is proposed by combining K-means clustering technology and multi-kernel support vector machine method to reduce the size of training data sets as well as training time and maintains a relatively good accuracy performance.
Abstract: When classifying very large-scale data sets, there are two major challenges: the first challenge is that it is time-consuming and laborious to label sufficient amount of training samples; the second challenge is that it is difficult to train a model in a time-efficient and high-accuracy manner. This is due to the fact that to create a high-accuracy model, normally it is required to generate a large and representative training set. A large training set may also require significantly more training time. There is a trade-off between the speed and accuracy when performing classification training, especially for large-scale data sets. To address this problem, a novel strategy of large-scale data classification is proposed by combining K-means clustering technology and multi-kernel support vector machine method. First, the K-means clustering method is used on a small portion of the original data set. The clustering stage is designed with a special strategy to select representative training instances. Such method reduces the needs of creating a large training set as well as the subsequent manual labeling work. K-means clustering method has two characteristics: (1) the result is greatly influenced by the cluster number k, and (2) the optimal result is difficult to achieve. In the proposed special strategy, the two characteristics are utilized to find the most representative instances by defining a relaxed cluster number k and doing K-means repeatedly. In each K-means clustering step, both the nearest and the farthest instance to each cluster center are selected into a set. Using this method, the selected instances will have a representative distribution of the original whole data set and reduce the need of labeling the original data set. An outlier detection method is applied to further delete the outlier instances according to their outlier scores. Finally, a multi-kernel SVM is trained using the selected instances and a classifier model can be obtained to predict subsequent new instances. The evaluation results show that the proposed instance selection method significantly reduces the size of training data sets as well as training time; in the meanwhile, it maintains a relatively good accuracy performance.

40 citations


Authors

Showing all 11222 results

NameH-indexPapersCitations
Shu Li136100178390
Yu Huang136149289209
Jian Zhang107306469715
Tao Li102248360947
Jian Chen96171852917
Jing Zhang95127142163
Qichun Zhang9454028367
Bin Li92175542835
Xianhui Bu8729020927
Dawei Wang8593441226
Guangshan Zhu7736921281
Fei Xu7174324009
Jian Zhang7031714802
Ying Wu7048922952
Chao Zhang6933123555
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Performance
Metrics
No. of papers from the Institution in previous years
YearPapers
202333
202285
2021997
2020900
2019754
2018571