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Ensembles of Neural Networks through crossover based pattern generation

机译:通过基于交叉的模式生成的神经网络集成

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The goal of an ensemble construction with several neural networks is to achieve better generalization than that of a single neural network. A Neural Network Ensemble (NNE) performs well when the component networks are diverse, so that failure of one is compensated for by others. Training data variation (i.e., different training sets for different networks) is a good source of diversity because the function that a network approximates is learned from its training data. We introduce a new approach to training data variation and propose the Ensemble based on Crossover based Pattern Generation (ECPG). ECPG generates some new training patterns for a particular network; a pair of pattern is generated interchanging some of input feature values in between a pair of selected original patterns. The effectiveness of ECPG was evaluated using several benchmark classification problems, and ECPG was found to achieve better or competitive performance with respect to related conventional methods. With several benefits over conventional methods, crossover based pattern generation appears to be a good technique for ensemble construction
机译:具有多个神经网络的集成结构的目标是获得比单个神经网络更好的概括性。当组件网络多种多样时,神经网络集成(NNE)的性能很好,因此一个故障可以由其他故障来补偿。训练数据变化(即,针对不同网络的不同训练集)是多样性的良好来源,因为网络的近似功能是从其训练数据中获悉的。我们介绍了一种训练数据变异的新方法,并提出了基于基于交叉的模式生成(ECPG)的集成体。 ECPG为特定网络生成一些新的培训模式;生成一对图案,在一对选定的原始图案之间交换一些输入特征值。使用几个基准分类问题评估了ECPG的有效性,发现ECPG相对于相关传统方法具有更好的性能或具有竞争力的性能。与传统方法相比,基于交叉的模式生成具有许多优势,这似乎是集成构建的一种好技术

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