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Artificial Neural Networks with Random Weights for Incomplete Datasets

机译:对于不完整数据集的随机重量的人工神经网络

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摘要

In this paper, we propose a method to design Neural Networks with Random Weights in the presence of incomplete data. We present a method, under the general assumption that the data is missing-at-random, to estimate the weights of the output layer as a function of the uncertainty of the missing data estimates. The proposed method uses the Unscented Transform to approximate the expected values and the variances of the training examples after the hidden layer. We model the input data as a Gaussian Mixture Model with parameters estimated via a maximum likelihood approach. The validity of the proposed method is empirically assessed under a range of conditions on simulated and real problems. We conduct numerical experiments to compare the performance of the proposed method to the performance of popular, parametric and non-parametric, imputation methods. By the results observed in the experiments, we conclude that our proposed method consistently outperforms its counterparts.
机译:在本文中,我们提出了一种在存在不完整数据的情况下设计具有随机权重的神经网络的方法。我们呈现了一种方法,在一般的假设下,数据缺失 - 随机缺失,以估计输出层的权重作为缺失数据估计的不确定性的函数。所提出的方法使用Unscented变换来近似隐藏在隐藏层之后近似训练示例的差异。我们将输入数据模拟为高斯混合模型,具有通过最大似然方法估计的参数。在模拟和实际问题的一系列条件下经验评估了所提出的方法的有效性。我们进行数值实验以比较所提出的方法对流行,参数和非参数的性能的性能。通过在实验中观察到的结果,我们得出的结论是,我们的提出方法始终如一地优于其对应物。

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