计算机科学
随机梯度下降算法
不确定度量化
机器学习
人工神经网络
梯度下降
人工智能
功能(生物学)
培训(气象学)
物理
进化生物学
气象学
生物
作者
Pegah Tabarisaadi,Abbas Khosravi,Saeid Nahavandi,Miadreza Shafie‐khah,João P. S. Catalào
标识
DOI:10.1109/tnnls.2022.3213315
摘要
Uncertainty quantification (UQ) for predictions generated by neural networks (NNs) is of vital importance in safety-critical applications. An ideal model is supposed to generate low uncertainty for correct predictions and high uncertainty for incorrect predictions. The main focus of state-of-the-art training algorithms is to optimize the NN parameters to improve the accuracy-related metrics. Training based on uncertainty metrics has been fully ignored or overlooked in the literature. This article introduces a novel uncertainty-aware training algorithm for classification tasks. A novel predictive uncertainty estimate-based objective function is defined and optimized using the stochastic gradient descent method. This new multiobjective loss function covers both accuracy and uncertainty accuracy (UA) simultaneously during training. The performance of the proposed training framework is compared from different aspects with other UQ techniques for different benchmarks. The obtained results demonstrate the effectiveness of the proposed framework for developing the NN models capable of generating reliable uncertainty estimates.
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