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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >A cooperative constructive method for neural networks for pattern recognition
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A cooperative constructive method for neural networks for pattern recognition

机译:用于模式识别的神经网络的协作构造方法

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摘要

In this paper, we propose a new constructive method, based on cooperative coevolution, for designing automatically the structure of a neural network for classification. Our approach is based on a modular construction of the neural network by means of a cooperative evolutionary process. This process benefits from the advantages of coevolutionary computation as well as the advantages of constructive methods. The proposed methodology can be easily extended to work with almost any kind of classifier. The evaluation of each module that constitutes the network is made using a multiobjective method. So, each new module can be evaluated in a comprehensive way, considering different aspects, such as performance, complexity, or degree of cooperation with the previous modules of the network. In this way, the method has the advantage of considering not only the performance of the networks, but also other features. The method is tested on 40 classification problems from the UCI machine learning repository with very good performance. The method is thoroughly compared with two other constructive methods, cascade correlation and GMDH networks, and other classification methods, namely, SVM, C4.5, and k nearest-neighbours, and an ensemble of neural networks constructed using four different methods. (c) 2006 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:在本文中,我们提出了一种基于协作协同进化的新构造方法,用于自动设计用于分类的神经网络的结构。我们的方法基于通过协作进化过程的神经网络的模块化构造。该过程受益于协同进化计算的优势以及构造方法的优势。所提出的方法可以很容易地扩展以与几乎任何种类的分类器一起使用。使用多目标方法对构成网络的每个模块进行评估。因此,可以考虑不同方面(例如性能,复杂性或与网络先前模块的协作程度),以一种综合的方式对每个新模块进行评估。以此方式,该方法具有不仅考虑网络的性能而且考虑其他特征的优点。该方法在UCI机器学习存储库中的40个分类问题上进行了测试,性能非常好。该方法与其他两种构造方法(级联相关和GMDH网络)以及其他分类方法(即SVM,C4.5和k最近邻)以及使用四种不同方法构造的神经网络集成进行了全面比较。 (c)2006模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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