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Adaptive Spectral Clustering Ensemble Selection via Resampling and Population-Based Incremental Learning Algorithm 被引量:5

Adaptive Spectral Clustering Ensemble Selection via Resampling and Population-Based Incremental Learning Algorithm
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摘要 In this paper, we explore a novel ensemble method for spectral clustering. In contrast to the traditional clustering ensemble methods that combine all the obtained clustering results, we propose the adaptive spectral clustering ensemble method to achieve a better clustering solution. This method can adaptively assess the number of the component members, which is not owned by many other algorithms. The component clusterings of the ensemble system are generated by spectral clustering (SC) which bears some good characteristics to engender the diverse committees. The selection process works by evaluating the generated component spectral clustering through resampling technique and population-based incremental learning algorithm (PBIL). Experimental results on UCI datasets demonstrate that the proposed algorithm can achieve better results compared with traditional clustering ensemble methods, especially when the number of component clusterings is large. In this paper, we explore a novel ensemble method for spectral clustering. In contrast to the traditional clustering ensemble methods that combine all the obtained clustering results, we propose the adaptive spectral clustering ensemble method to achieve a better clustering solution. This method can adaptively assess the number of the component members, which is not owned by many other algorithms. The component clusterings of the ensemble system are generated by spectral clustering (SC) which bears some good characteristics to engender the diverse committees. The selection process works by evaluating the generated component spectral clustering through resampling technique and population-based incremental learning algorithm (PBIL). Experimental results on UCI datasets demonstrate that the proposed algorithm can achieve better results compared with traditional clustering ensemble methods, especially when the number of component clusterings is large.
出处 《Wuhan University Journal of Natural Sciences》 CAS 2011年第3期228-236,共9页 武汉大学学报(自然科学英文版)
基金 Supported by the National Natural Science Foundation of China (60661003) the Research Project Department of Education of Jiangxi Province (GJJ10566)
关键词 spectral clustering clustering ensemble selective ensemble RESAMPLING population-based incremental learning algorithm (PBIL) data clustering spectral clustering clustering ensemble selective ensemble resampling population-based incremental learning algorithm (PBIL) data clustering
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  • 1Duda R O, Hart P E, Stork D G. Pattern Classification[M]. Beijing: China Machine Press, 2000.
  • 2Jain A K, Murty M N, Flynn. Data clusteirng: A review[J]. ACM Computing Surveys(CSUR), 1999, 31(3): 264-323.
  • 3Dietterich T G. Machine-learning research[J]. AI Magazine, 1997, 18(4): 97-136,.
  • 4Strehl A, Ghosh J. Cluster ensembles--A knowledge reuse framework for combining multiple partitions [J]. The Journal of Machine Learning Research, 2003, 3(12): 583-617.
  • 5Zhang X R, Jiao L C, Liu E et al. Spectral clustering ensemble applied to SAR image segmentation[J]. 1EEE Transactions on Geoscience and Remote Sensing, 2008, 46(7): 2126-2136.
  • 6Breiman L. Bagging predictors[J]. Machine Learning, 1996, 24(2): 123-140.
  • 7Schapire R E. The strength of weak learnability[J]. Machine Learning, 1990, 5(2): 197-227.
  • 8Topchy A, Jain A K, Punch W. Clustering ensembles: Models of consensus and weak partitions[J]. IEEE Transactions on Pattern Analysis and Machine Intelligent, 2005, 27(12):1866-1881.
  • 9Fred A L N, Jain A K. Combining multiple clusterings using evidence accumulation[J]. 1EEE Transactions on Pattern Analysis and Machine Intelligent, 2005, 27(6): 835-850.
  • 10Fern X Z, Brodley C E. Random projection for high dimensional data clustering: a cluster ensemble approach[C]//Proc the 20th International Conference on Machine Learning (ICML), Menlo Park: AAAI Press, 2003: 186-191.

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