首页> 外文会议>Evolutionary Computation, 2006. CEC 2006. IEEE Congress on >Evolutionary Multiobjective Ensemble Learning Based on Bayesian Feature Selection
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Evolutionary Multiobjective Ensemble Learning Based on Bayesian Feature Selection

机译:基于贝叶斯特征选择的进化多目标集成学习

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This paper proposes to incorporate evolutionary multiobjective algorithm and Bayesian Automatic Relevance Determination (ARD) to automatically design and train ensemble. The algorithm determines almost all the parameters of ensemble automatically. Our algorithm adopts different feature subsets, selected by Bayesian ARD, to maintain accuracy and promote diversity among individual NNs in an ensemble. The multiobjective evaluation of the fitness of the networks encourages the networks with lower error rate and fewer features. The proposed algorithm is applied to several real-world classification problems and in all cases the performance of the method is better than the performance of other ensemble construction algorithms.
机译:本文提出将进化多目标算法与贝叶斯自动相关性确定(ARD)相结合,以自动设计和训练集合体。该算法自动确定集合的几乎所有参数。我们的算法采用贝叶斯ARD选择的不同特征子集,以保持准确性并促进整体神经网络之间的多样性。网络适​​应性的多目标评估鼓励网络具有较低的错误率和较少的功能。所提出的算法被应用于几个现实世界中的分类问题,并且在所有情况下该方法的性能都优于其他整体构造算法。

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