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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Coevolutionary learning of neural network ensemble for complex classification tasks
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Coevolutionary learning of neural network ensemble for complex classification tasks

机译:复杂分类任务的神经网络集成的协同进化学习

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摘要

Ensemble approaches to classification have attracted a great deal of interest recently. This paper presents a novel method for designing the neural network ensemble using coevolutionary algorithm. The bootstrap resampling procedure is employed to obtain different training subsets that are used to estimate different component networks of the ensemble. Then the cooperative coevolutionary algorithm is developed to optimize the ensemble model via the divide-and-cooperative mechanism. All component networks are coevolved in parallel in the scheme of interacting co-adapted subpopulations. The fitness of an individual from a particular subpopulation is assessed by associating it with the representatives from other subpopulations. In order to promote the cooperation of all component networks, the proposed method considers both the accuracy and the diversity among the component networks that are evaluated using the multi-objective Pareto optimality measure. A hybrid output-combination method is designed to determine the final ensemble output. Experimental results illustrate that the proposed method is able to obtain neural network ensemble models with better classification accuracy in comparison with currently popular ensemble algorithms.
机译:集成的分类方法最近引起了人们的极大兴趣。本文提出了一种使用协同进化算法设计神经网络集成的新方法。自举重采样过程用于获得不同的训练子集,这些子集可用于估计集合的不同组成网络。然后,开发了合作协同进化算法,通过分而合作机制优化了集成模型。所有组件网络在交互共同适应的子群体的方案中并行协同发展。通过将特定亚人群的个体与其他亚人群的代表相关联来评估其适应性。为了促进所有组成网络的协作,该方法考虑了使用多目标帕累托最优测度评估的组成网络之间的准确性和多样性。设计了一种混合输出组合方法来确定最终合奏输出。实验结果表明,与目前流行的集成算法相比,该方法能够获得分类精度更高的神经网络集成模型。

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