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Building Calibrated Deep Models via Uncertainty Matching with Auxiliary Interval Predictors

机译:通过与辅助间隔预测器的不确定性匹配构建校准的深模型

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With rapid adoption of deep learning in critical applications, the question of when and how much to trust these models often arises, which drives the need to quantify the inherent uncertainties. While identifying all sources that account for the stochasticity of models is challenging, it is common to augment predictions with confidence intervals to convey the expected variations in a model's behavior. We require prediction intervals to be well-calibrated, reflect the true uncertainties, and to be sharp. However, existing techniques for obtaining prediction intervals are known to produce unsatisfactory results in at least one of these criteria. To address this challenge, we develop a novel approach for building calibrated estimators. More specifically, we use separate models for prediction and interval estimation, and pose a bi-level optimization problem that allows the former to leverage estimates from the latter through an uncertainty matching strategy. Using experiments in regression, time-series forecasting, and object localization, we show that our approach achieves significant improvements over existing uncertainty quantification methods, both in terms of model fidelity and calibration error.
机译:随着关键应用中的快速采用深度学习,何时以及信任这些模型的何时何种问题,通常会出现,这使得需要量化固有的不确定性。虽然识别用于模型的随机性挑战的所有来源,但是常常增加预测,以置信区间以置信区间传达模型行为中的预期变化。我们需要预测间隔才能校准,反映真正的不确定性,并尖锐。然而,已知用于获得预测间隔的现有技术在这些标准中的至少一个中产生不令人满意的结果。为了解决这一挑战,我们开发了一种建立校准估计的新方法。更具体地,我们使用单独的模型进行预测和间隔估计,并构成双级优化问题,允许前者通过不确定性匹配策略利用后者利用估计。在回归中的实验,时间序列预测和对象本地化,我们表明我们的方法在模型保真度和校准误差方面实现了对现有的不确定性量化方法的显着改进。

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