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Constructive Ensemble of RBF Neural Networks and Its Application to Earthquake Prediction

机译:RBF神经网络的建设性集合及其在地震预测中的应用

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Neural networks ensemble is a hot topic in machine learning community, which can significantly improve the generalization ability of single neural networks. However, the design of ensemble architecture still relies on either a tedious trial-and-error process or the experts' experience. This paper proposes a novel method called CERNN (Constructive Ensemble of RBF Neural Networks), in which the number of individuals, the number of hidden nodes and training epoch of each individual are determined automatically. The generalization performance of CERNN can be improved by using different training subsets and individuals with different architectures. Experiments on UCI datasets demonstrate that CERNN is effective to release the user from the tedious trial-and-error process, so is it when applied to earthquake prediction.
机译:神经网络集合是机器学习界的热门话题,可以显着提高单个神经网络的泛化能力。然而,集合架构的设计仍然依赖于乏味的试验和错误过程或专家的经验。本文提出了一种名为Cernn的新方法(RBF神经网络的建设性集合),其中自动确定各个单位的数量,隐藏节点的数量和每个单独的训练时期。通过使用不同的培训子集和具有不同架构的个人,可以提高Cernn的泛化性能。 UCI数据集的实验表明,Cernn有效地从繁琐的试验和错误过程中释放用户,因此它在应用于地震预测时。

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