Computationally efficient Bayesian unit-level random neural network modelling of survey data under informative sampling for small area estimation

Paul A Parker, Scott H Holan
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Abstract

Abstract The topic of neural networks has seen a surge of interest in recent years. However, one of the main challenges with these approaches is quantification of uncertainty. The use of random weight models offer a potential solution. In addition to uncertainty quantification, these models are extremely computationally efficient as they do not require optimisation through stochastic gradient descent. We show how this approach can be used to account for informative sampling of survey data through the use of a pseudo-likelihood. We illustrate the effectiveness of this methodology through simulation and data application involving American National Election Studies data.
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基于信息抽样的调查数据的高效贝叶斯单位级随机神经网络建模
近年来,神经网络这个话题引起了人们的极大兴趣。然而,这些方法的主要挑战之一是不确定性的量化。随机权重模型的使用提供了一个潜在的解决方案。除了不确定性量化之外,这些模型的计算效率极高,因为它们不需要通过随机梯度下降进行优化。我们展示了这种方法如何通过使用伪似然来解释调查数据的信息抽样。我们通过模拟和涉及美国全国选举研究数据的数据应用来说明这种方法的有效性。
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