Separation of Aleatoric and Epistemic Uncertainty in Deterministic Deep Neural Networks

Denis Huseljic, B. Sick, M. Herde, D. Kottke
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引用次数: 14

Abstract

Despite the success of deep neural networks (DNN) in many applications, their ability to model uncertainty is still significantly limited. For example, in safety-critical applications such as autonomous driving, it is crucial to obtain a prediction that reflects different types of uncertainty to address life-threatening situations appropriately. In such cases, it is essential to be aware of the risk (i.e., aleatoric uncertainty) and the reliability (i.e., epistemic uncertainty) that comes with a prediction. We present AE-DNN, a model allowing the separation of aleatoric and epistemic uncertainty while maintaining a proper generalization capability. AE-DNN is based on deterministic DNN, which can determine the respective uncertainty measures in a single forward pass. In analyses with synthetic and image data, we show that our method improves the modeling of epistemic uncertainty while providing an intuitively understandable separation of risk and reliability.
确定性深度神经网络中任意不确定性与认知不确定性的分离
尽管深度神经网络(DNN)在许多应用中取得了成功,但它们对不确定性建模的能力仍然非常有限。例如,在自动驾驶等安全关键应用中,获得反映不同类型不确定性的预测以适当解决危及生命的情况至关重要。在这种情况下,必须意识到预测带来的风险(即任意不确定性)和可靠性(即认知不确定性)。我们提出了AE-DNN模型,该模型允许在保持适当泛化能力的同时分离任意不确定性和认知不确定性。AE-DNN基于确定性DNN,可以确定单个前向传递中各自的不确定性测度。在对合成数据和图像数据的分析中,我们表明我们的方法改进了认知不确定性的建模,同时提供了直观可理解的风险和可靠性分离。
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