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Neural Stochastic Differential Equations with Neural Processes Family Members for Uncertainty Estimation in Deep Learning

机译:神经过程与神经过程的神经随机微分方程家庭成员在深度学习中的不确定性估算

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摘要

Existing neural stochastic differential equation models, such as SDE-Net, can quantify the uncertainties of deep neural networks (DNNs) from a dynamical system perspective. SDE-Net is either dominated by its drift net with in-distribution (ID) data to achieve good predictive accuracy, or dominated by its diffusion net with out-of-distribution (OOD) data to generate high diffusion for characterizing model uncertainty. However, it does not consider the general situation in a wider field, such as ID data with noise or high missing rates in practice. In order to effectively deal with noisy ID data for credible uncertainty estimation, we propose a vNPs-SDE model, which firstly applies variants of neural processes (NPs) to deal with the noisy ID data, following which the completed ID data can be processed more effectively by SDE-Net. Experimental results show that the proposed vNPs-SDE model can be implemented with convolutional conditional neural processes (ConvCNPs), which have the property of translation equivariance, and can effectively handle the ID data with missing rates for one-dimensional (1D) regression and two-dimensional (2D) image classification tasks. Alternatively, vNPs-SDE can be implemented with conditional neural processes (CNPs) or attentive neural processes (ANPs), which have the property of permutation invariance, and exceeds vanilla SDE-Net in multidimensional regression tasks.
机译:现有的神经随机微分方程模型,例如SDE-Net,可以量化来自动态系统的视角来的深神经网络(DNN)的不确定性。 SDE-Net由其漂移网络主导,具有分配的(ID)数据,以实现良好的预测精度,或者由其扩散网带来与分配的(OOD)数据为主,以产生高扩散以表征模型不确定性。但是,它不考虑更广泛的领域中的一般情况,例如在实践中具有噪声或高缺失率的ID数据。为了有效地处理嘈杂的ID数据进行可靠的不确定性估计,我们提出了一个VNPS-SDE模型,首先应用神经过程(NPS)的变体来处理嘈杂的ID数据,这是可以更多地处理所完成的ID数据的噪声ID数据。有效地通过SDE-NET。实验结果表明,建议的VNPS-SDE模型可以用卷积条件神经过程(CONCCNP)来实现翻译标准规范的属性,并且可以有效地处理缺失的ID数据,缺失的一维(1D)回归和两个-dimensional(2D)图像分类任务。或者,VNPS-SDE可以用条件神经过程(CNP)或细心的神经过程(ANP)来实现,其具有置换不变性的性质,并且超过多维回归任务中的Vanilla SDE-Net。

著录项

  • 期刊名称 Sensors (Basel Switzerland)
  • 作者

    Yongguang Wang; Shuzhen Yao;

  • 作者单位
  • 年(卷),期 2021(21),11
  • 年度 2021
  • 页码 3708
  • 总页数 26
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 关键词

    机译:深神经网络;神经随机微分方程;神经过程;不确定性估计;
  • 入库时间 2022-08-21 12:28:36

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