Selective Ensemble Method Based on Spectral Clustering

Author(s):  
Bowen Fei ◽  
Daqian Liu ◽  
Songgang Bi ◽  
Guanlin Wu ◽  
Xiongtao Zhang ◽  
...  
Author(s):  
Lin Xiong ◽  
Shasha Mao ◽  
Licheng Jiao

The diversity and the accuracy are two important ingredients for ensemble generalization error in an ensemble classifiers system. Nevertheless enhancing the diversity is at the expense of decreasing the accuracy of classifiers, thus balancing the diversity and the accuracy is crucial for constructing a good ensemble method. In the paper, a new ensemble method is proposed that selecting classifiers to ensemble via the transformation of individual classifiers based on diversity and accuracy. In the proposed method, the transformation of classifiers is made to produce new individual classifiers based on original classifiers and the true labels, in order to enhance diversity of an ensemble. The transformation approach is similar to principal component analysis (PCA), but it is essentially different between them that the proposed method employs the true labels to construct the covariance matrix rather than the mean of samples in PCA. Then a selecting rule is constructed based on two rules of measuring the classification performance. By the selecting rule, some available new classifiers are selected to ensemble in order to ensure the accuracy of the ensemble with selected classifiers. In other words, some individuals with poor or same performance are eliminated. Particularly, a new classifier produced by the transformation is equivalent to a linear combination of original classifiers, which indicates that the proposed method enhances the diversity by different transformations instead of constructing different training subsets. The experimental results illustrate that the proposed method obtains the better performance than other methods, and the kappa-error diagrams also illustrate that the proposed method enhances the diversity compared against other methods.


2011 ◽  
Vol 34 (8) ◽  
pp. 1399-1410 ◽  
Author(s):  
Chun-Xia ZHANG ◽  
Jiang-She ZHANG

2011 ◽  
Vol 31 (2) ◽  
pp. 441-445 ◽  
Author(s):  
Guang LING ◽  
Ming-chun WANG ◽  
Jia-yi FENG

Author(s):  
Xiaohui Wang ◽  
Yu Bai ◽  
Yadong Gao ◽  
Dong Liu ◽  
Yan Zhang ◽  
...  
Keyword(s):  

2021 ◽  
Vol 13 (3) ◽  
pp. 355
Author(s):  
Weixian Tan ◽  
Borong Sun ◽  
Chenyu Xiao ◽  
Pingping Huang ◽  
Wei Xu ◽  
...  

Classification based on polarimetric synthetic aperture radar (PolSAR) images is an emerging technology, and recent years have seen the introduction of various classification methods that have been proven to be effective to identify typical features of many terrain types. Among the many regions of the study, the Hunshandake Sandy Land in Inner Mongolia, China stands out for its vast area of sandy land, variety of ground objects, and intricate structure, with more irregular characteristics than conventional land cover. Accounting for the particular surface features of the Hunshandake Sandy Land, an unsupervised classification method based on new decomposition and large-scale spectral clustering with superpixels (ND-LSC) is proposed in this study. Firstly, the polarization scattering parameters are extracted through a new decomposition, rather than other decomposition approaches, which gives rise to more accurate feature vector estimate. Secondly, a large-scale spectral clustering is applied as appropriate to meet the massive land and complex terrain. More specifically, this involves a beginning sub-step of superpixels generation via the Adaptive Simple Linear Iterative Clustering (ASLIC) algorithm when the feature vector combined with the spatial coordinate information are employed as input, and subsequently a sub-step of representative points selection as well as bipartite graph formation, followed by the spectral clustering algorithm to complete the classification task. Finally, testing and analysis are conducted on the RADARSAT-2 fully PolSAR dataset acquired over the Hunshandake Sandy Land in 2016. Both qualitative and quantitative experiments compared with several classification methods are conducted to show that proposed method can significantly improve performance on classification.


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