Journal of System Simulation
Abstract
Abstract: Tri-training can effectively improve the generalization ability of classifiers by using unlabeled data for classification, but it is prone to mislabeling unlabeled data, thus forming training noise. Tritraining (Tri-training with density peaks clustering, DPC-TT) algorithm based on density peaks clustering is proposed. The DPC-TT algorithm uses the density peaks clustering algorithm to obtain the class cluster centers and local densities of the training data, and the samples within the truncation distance of the class cluster centers are identified as the samples with better spatial structure, and these samples are labeled as the core data, and the classifier is updated with the core data, which can reduce the training noise during the iteration to improve the performance of the classifier. The experimental results show that the DPC-TT algorithm has better classification performance compared with the standard Tri-training algorithm and its improvement algorithm.
Recommended Citation
Luo, Yuhang; Wu, Runxiu; Cui, Zhihua; Zhang, Yiying; He, Yeshen; and Zhao, Jia
(2024)
"Tri-training Algorithm Based on Density Peaks Clustering,"
Journal of System Simulation: Vol. 36:
Iss.
5, Article 13.
DOI: 10.16182/j.issn1004731x.joss.22-1550
Available at:
https://dc-china-simulation.researchcommons.org/journal/vol36/iss5/13
First Page
1189
Last Page
1198
CLC
TP391.9; TP18
Recommended Citation
Luo Yuhang, Wu Runxiu, Cui Zhihua, et al. Tri-training Algorithm Based on Density Peaks Clustering [J]. Journal of System Simulation, 2024, 36(5): 1189-1198.
DOI
10.16182/j.issn1004731x.joss.22-1550
Included in
Artificial Intelligence and Robotics Commons, Computer Engineering Commons, Numerical Analysis and Scientific Computing Commons, Operations Research, Systems Engineering and Industrial Engineering Commons, Systems Science Commons