Simple and Effective Approaches for Uncertainty Prediction in Facial Action Unit Intensity Regression.

Torsten Wörtwein, Louis-Philippe Morency
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引用次数: 3

Abstract

Knowing how much to trust a prediction is important for many critical applications. We describe two simple approaches to estimate uncertainty in regression prediction tasks and compare their performance and complexity against popular approaches. We operationalize uncertainty in regression as the absolute error between a model's prediction and the ground truth. Our two proposed approaches use a secondary model to predict the uncertainty of a primary predictive model. Our first approach leverages the assumption that similar observations are likely to have similar uncertainty and predicts uncertainty with a non-parametric method. Our second approach trains a secondary model to directly predict the uncertainty of the primary predictive model. Both approaches outperform other established uncertainty estimation approaches on the MNIST, DISFA, and BP4D+ datasets. Furthermore, we observe that approaches that directly predict the uncertainty generally perform better than approaches that indirectly estimate uncertainty.

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面部动作单元强度回归中不确定性预测的简单有效方法。
知道在多大程度上信任预测对于许多关键应用程序都很重要。我们描述了两种简单的方法来估计回归预测任务中的不确定性,并将它们的性能和复杂性与流行的方法进行了比较。我们将回归中的不确定性作为模型预测与基本事实之间的绝对误差来操作。我们提出的两种方法使用二级模型来预测初级预测模型的不确定性。我们的第一种方法利用了类似观测可能具有类似不确定性的假设,并使用非参数方法预测不确定性。我们的第二种方法训练一个辅助模型来直接预测主要预测模型的不确定性。在MNIST、DISFA和BP4D+数据集上,这两种方法都优于其他已建立的不确定性估计方法。此外,我们观察到直接预测不确定性的方法通常比间接估计不确定性的方法表现得更好。
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