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Clustering-based selective neural network ensemble 被引量:2

Clustering-based selective neural network ensemble
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摘要 An effective ensemble should consist of a set of networks that are both accurate and diverse. We propose a novel clustering-based selective algorithm for constructing neural network ensemble, where clustering technology is used to classify trained networks according to similarity and optimally select the most accurate individual network from each cluster to make up the ensemble. Empirical studies on regression of four typical datasets showed that this approach yields significantly smaller en- semble achieving better performance than other traditional ones such as Bagging and Boosting. The bias variance decomposition of the predictive error shows that the success of the proposed approach may lie in its properly tuning the bias/variance trade-off to reduce the prediction error (the sum of bias2 and variance). An effective ensemble should consist of a set of networks that are both accurate and diverse. We propose a novel clustering-based selective algorithm for constructing neural network ensemble, where clustering technology is used to classify trained networks according to similarity and optimally select the most accurate individual network from each cluster to make up the ensemble. Empirical studies on regression of four typical datasets showed that this approach yields significantly smaller en- semble achieving better performance than other traditional ones such as Bagging and Boosting. The bias variance decomposition of the predictive error shows that the success of the proposed approach may lie in its properly tuning the bias/variance trade-off to reduce the prediction error (the sum of bias2 and variance).
出处 《Journal of Zhejiang University-Science A(Applied Physics & Engineering)》 SCIE EI CAS CSCD 2005年第5期387-392,共6页 浙江大学学报(英文版)A辑(应用物理与工程)
关键词 计算机技术 神经网络 聚类技术 聚类选择 Neural network, Ensemble, Clustering
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参考文献2

  • 1Eric Bauer,Ron Kohavi.An Empirical Comparison of Voting Classification Algorithms: Bagging, Boosting, and Variants[J].Machine Learning (-).1999(1-2)
  • 2Leo Breiman.Bagging predictors[J].Machine Learning.1996(2)

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