基于人工训练样例的神经网络集成

M. Akhand, P. C. Shill, K. Murase
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引用次数: 2

摘要

多个神经网络的集成被广泛用于提高单个网络的泛化性能。组件网络之间适当的多样性被认为是集成结构的重要参数,这样一个组件网络的失效可以由其他组件网络补偿。数据抽样,即不同网络的不同训练集,是比其他方法研究最多的多样性技术。本文提出了一种基于数据采样的神经网络集成方法,该方法利用原始训练集和一些人工生成的示例集的并集来训练单个网络。对于不同的网络,生成的示例是不同的,并且是在网络之间产生多样性的要素。在一组20个基准分类问题上评估了该方法的有效性。实验结果表明,与现有的常用方法相比,该方法的性能更好或更具竞争力。
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Neural network ensembles based on Artificial Training Examples
Ensembles with several neural networks are widely used to improve the generalization performance over a single network. Proper diversity among component networks is considered an important parameter for ensemble construction so that failure of one may be compensated by others. Data sampling, i.e., different training sets for different networks, is the most investigated technique for diversity than other approaches. This paper presents a data sampling based neural network ensemble method where individual networks are trained on the union of original training set and a set of some artificially generated examples. Generated examples are different for different networks and are the element to produce diversity among the networks. The effectiveness of the method is evaluated on a suite of 20 benchmark classification problems. The experimental results show that the performance of this ensemble method is better or competitive with respect to the existing popular methods.
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