4.6 Article

Bayesian Graph Convolutional Neural Networks via Tempered MCMC

期刊

IEEE ACCESS
卷 9, 期 -, 页码 130353-130365

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2021.3111898

关键词

Bayes methods; Neural networks; Deep learning; Convolutional neural networks; Data models; Computational modeling; Uncertainty; Bayesian neural networks; MCMC; Langevin dynamics; Bayesian deep learning; graph neural networks

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Deep learning models, such as convolutional neural networks, have been widely used for image and multimedia tasks, with recent focus on unstructured data represented by graphs. Graph convolutional neural networks utilize graph-based data representation and convolutions for automatic feature extraction. Despite their popularity in various fields, uncertainty quantification remains a challenge.
Deep learning models, such as convolutional neural networks, have long been applied to image and multi-media tasks, particularly those with structured data. More recently, there has been more attention to unstructured data that can be represented via graphs. These types of data are often found in health and medicine, social networks, and research data repositories. Graph convolutional neural networks have recently gained attention in the field of deep learning that takes advantage of graph-based data representation with automatic feature extraction via convolutions. Given the popularity of these methods in a wide range of applications, robust uncertainty quantification is vital. This remains a challenge for large models and unstructured datasets. Bayesian inference provides a principled approach to uncertainty quantification of model parameters for deep learning models. Although Bayesian inference has been used extensively elsewhere, its application to deep learning remains limited due to the computational requirements of the Markov Chain Monte Carlo (MCMC) methods. Recent advances in parallel computing and advanced proposal schemes in MCMC sampling methods has opened the path for Bayesian deep learning. In this paper, we present Bayesian graph convolutional neural networks that employ tempered MCMC sampling with Langevin-gradient proposal distribution implemented via parallel computing. Our results show that the proposed method can provide accuracy similar to advanced optimisers while providing uncertainty quantification for key benchmark problems.

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