委员会神经网络的鲁棒组合方法

S. A. Jafari, S. Mashohor
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引用次数: 3

摘要

与单个专家相比,组合一组合适的专家可以提高群体的泛化性能。该领域的经典问题是回答如何将整体成员或个体结合起来的问题。文献中报道了将专家的输出组合在委员会机(集成)中的不同方法。确定每种预测误差的常用方法是均方误差(MSE),它受到许多实际数据(如地球科学数据)中存在的异常值的严重影响。本文介绍了鲁棒委员会神经网络(rcnn)。我们提出的方法是Huber和bissquared函数来确定测量值与预测值之间的误差,该方法受异常值的影响较小。因此,我们使用遗传算法(GA)方法将个体与Huber和bissquared作为适应度函数组合在一起。结果表明,这两个函数的均方根误差(RMSE)和r平方值与作为适应度函数的均方根误差(MSE)相比得到了改善,并且所提出的组合优于其他五种现有的训练算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust combining methods in committee neural networks
Combining a set of suitable experts can improve the generalization performance of the group when compared to single experts alone. The classical problem in this area is to answer the question about how to combine the ensemble members or the individuals. Different methods for combining the outputs of the experts in a committee machine (ensemble) are reported in the literature. The popular method to determine the error in every prediction is Mean Square Error (MSE), which is heavily influenced by outliers that can be found in many real data such as geosciences data. In this paper we introduce Robust Committee Neural Networks (RCNNs). Our proposed approach is the Huber and Bisquare function to determine the error between measured and predicted value which is less influenced by outliers. Therefore, we have used a Genetic Algorithm (GA) method to combine the individuals with the Huber and Bisquare as the fitness functions. The results show that the Root Mean Square Error (RMSE) and R-square values for these two functions are improved compared to the MSE as the fitness function and the proposed combiner outperformed other five existing training algorithms.
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