Deep neural networks are in the limelight of machine learning with their excellent performance in many data-driven applications. However, they can lead to inaccurate predictions when queried in out-of-distribution data points, which can have detrimental effects especially in sensitive domains, such as healthcare and transportation, where erroneous predictions can be very costly and/or dangerous. Subsequently, quantifying the uncertainty of the output of a neural network is often leveraged to evaluate the confidence of its predictions, and ensemble models have proved to be effective in measuring the uncertainty by utilizing the variance of predictions over a pool of models. In this paper, we propose a novel approach for uncertainty quantification via ensembles, called Random Activation Functions (RAFs) Ensemble, that aims at improving the ensemble diversity toward a more robust estimation, by accommodating each neural network with a different (random) activation function. Extensive empirical study demonstrates that RAFs Ensemble outperforms state-of-the-art ensemble uncertainty quantification methods on both synthetic and real-world datasets in a series of regression tasks.
翻译:深神经网络是机器学习的焦点,它在许多数据驱动的应用中表现优异。然而,当在分配外的数据点中被问及时,它们可能导致不准确的预测,这可能会产生有害影响,特别是在诸如保健和运输等敏感领域,错误的预测可能非常昂贵和/或危险。随后,对神经网络产出的不确定性进行量化,常常被用来评价其预测的可信度,共同模型已证明通过利用一组模型的预测差异来衡量不确定性是有效的。在本文中,我们提出了一个新的方法,通过合成和现实世界数据组群(称为随机激活功能(RAF))来量化不确定性,目的是通过适应每个神经网络的不同(随机)激活功能,改进整体多样性,以更稳健的估计。广泛的实证研究表明,在一系列回归任务中,农机组组群组成了最先进的混合不确定性量化方法。</s>