不确定度量化
颂歌
计算机科学
随机微分方程
数学优化
人工神经网络
概率逻辑
概率分布
理论(学习稳定性)
贝叶斯概率
差异(会计)
贝叶斯网络
还原(数学)
随机神经网络
独特性
人工智能
应用数学
数学
机器学习
循环神经网络
统计
会计
数学分析
业务
几何学
作者
Yichao Geng,Hiroaki Mukaidani,T. Shima
标识
DOI:10.23919/sice59929.2023.10354198
摘要
Uncertainty quantification plays a crucial role in reduction of uncertainties during optimization and decision making, however, it is not solved yet in deep learning. Bayesian network is often used for uncertainty estimation but is only applicable to cases with a small number of parameters because the prior probability of the parameters is needed. On the other hand, while some non-Bayesian models have solved the parameter limitation problem, they often fail to separate different sources of uncertainties. In order to address these issues, we propose the Reduce Bias Stochastic Differential Equation Network (RB-SDENet) by adding a stochastic term to the existing ODE network, which enables us to capture epistemic uncertainty through the variance of random motion. And the probabilistic distribution of output can represent the aleatoric uncertainty for the model. Additionally, we ensured the stability of the model through the mathematical analysis of uniqueness.
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