Abstract Robust stochastic configuration networks with kernel density estimation for uncertain data regression
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Robust stochastic configuration networks with kernel density estimation for uncertain data regression

机译:具有核心密度估计的强大随机配置网络,不确定数据回归

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Abstract Neural networks have been widely used as predictive models to fit data distribution, and they could be implemented through learning a collection of samples. In many applications, however, the given dataset may contain noisy samples or outliers which may result in a poor learner model in terms of generalization. This paper contributes to a development of robust stochastic configuration networks (RSCNs) for resolving uncertain data regression problems. RSCNs are built on original stochastic configuration networks with weighted least squares method for evaluating the output weights, and the input weights and biases are incrementally and randomly generated by satisfying with a set of inequality constrains. The kernel density estimation (KDE) method is employed to set the penalty weights for each training samples, so that some negative impacts, caused by noisy data or outliers, on the resulting learner model can be reduced. The alternating optimization technique is applied for updating a RSCN model with improved penalty weights computed from the kernel density estimation function. Performance evaluation is carried out by a function approximation, four benchmark datasets and a case study on engineering application. Comparisons to other robust randomised neural modelling techniques, including the probabilistic robust learning algorithm for neural networks with random weights and improved RVFL networks, indicate that the proposed RSCNs with KDE perform favourably and demonstrate good potential for real-world applications. ]]>
机译:<![cdata [ 抽象 神经网络已被广泛用作适合数据分布的预测模型,并且可以通过学习样本集合来实现。然而,在许多应用中,给定的数据集可能包含噪声样本或异常值,这可能导致较差的学习者模型。本文有助于开发强大的随机配置网络(RSCN),用于解决不确定的数据回归问题。 RSCN在具有用于评估输出权重的加权最小二乘法的原始随机配置网络上构建,并且通过满足一组不等式约束来逐步和随机地生成输入权重和偏差。采用内核密度估计(KDE)方法来为每个训练样本设置罚款权重,因此可以减少由噪声数据或异常值引起的一些负面影响,可以减少所得到的学习者模型。应用交替优化技术以更新从核密度估计函数计算的改进的惩罚权重的RSCN模型。性能评估由函数近似,四个基准数据集和工程应用案例研究进行。对其他强大的随机性神经建模技术的比较,包括具有随机权重和改进的RVFL网络的神经网络的概率鲁棒学习算法,表明具有KDE的提议的RSCNS对现实世界应用的良好潜力进行了良好的。 ]]>

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