论文标题
基于贝叶斯神经网络认知不确定性的分布式歧视器
An out-of-distribution discriminator based on Bayesian neural network epistemic uncertainty
论文作者
论文摘要
神经网络通过提高预测能力彻底改变了机器学习领域。除了改善神经网络的预测外,还需要对通过神经网络等机器学习方法进行的估计值进行可靠的不确定性量化。贝叶斯神经网络(BNNS)是具有内置能力的重要类型,可量化不确定性。本文讨论了BNN中的核心和认知不确定性及其如何计算。借助图像的示例数据集,其目标是确定图像中事件的幅度,这表明认知不确定性在训练数据集中代表性很好的图像中倾向于较低,并且在没有很好代表的图像中趋于较高。引入了一种用于BNN认知不确定性的算法(OOD)检测算法,以及各种实验,这些实验证明了影响BNN中OOD检测能力的因素。证明具有认知不确定性的OOD检测能力可与具有可比的网络体系结构的生成对抗网络(GAN)的歧视网络中的OOD检测相媲美。
Neural networks have revolutionized the field of machine learning with increased predictive capability. In addition to improving the predictions of neural networks, there is a simultaneous demand for reliable uncertainty quantification on estimates made by machine learning methods such as neural networks. Bayesian neural networks (BNNs) are an important type of neural network with built-in capability for quantifying uncertainty. This paper discusses aleatoric and epistemic uncertainty in BNNs and how they can be calculated. With an example dataset of images where the goal is to identify the amplitude of an event in the image, it is shown that epistemic uncertainty tends to be lower in images which are well-represented in the training dataset and tends to be high in images which are not well-represented. An algorithm for out-of-distribution (OoD) detection with BNN epistemic uncertainty is introduced along with various experiments demonstrating factors influencing the OoD detection capability in a BNN. The OoD detection capability with epistemic uncertainty is shown to be comparable to the OoD detection in the discriminator network of a generative adversarial network (GAN) with comparable network architecture.