Learning Expressive Priors for Generalization and Uncertainty Estimation in Neural Networks

Dominik Schnaus, Jongseok Lee, D. Cremers, Rudolph Triebel
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Abstract

In this work, we propose a novel prior learning method for advancing generalization and uncertainty estimation in deep neural networks. The key idea is to exploit scalable and structured posteriors of neural networks as informative priors with generalization guarantees. Our learned priors provide expressive probabilistic representations at large scale, like Bayesian counterparts of pre-trained models on ImageNet, and further produce non-vacuous generalization bounds. We also extend this idea to a continual learning framework, where the favorable properties of our priors are desirable. Major enablers are our technical contributions: (1) the sums-of-Kronecker-product computations, and (2) the derivations and optimizations of tractable objectives that lead to improved generalization bounds. Empirically, we exhaustively show the effectiveness of this method for uncertainty estimation and generalization.
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神经网络泛化与不确定性估计的表达先验学习
在这项工作中,我们提出了一种新的先验学习方法来提高深度神经网络的泛化和不确定性估计。关键思想是利用神经网络的可扩展和结构化后验作为具有泛化保证的信息先验。我们学习到的先验提供了大规模的表达性概率表示,就像ImageNet上预训练模型的贝叶斯对应,并进一步产生非空洞的泛化边界。我们还将这个想法扩展到持续学习框架中,在这个框架中,我们先验的有利属性是可取的。主要的推动因素是我们的技术贡献:(1)kronecker -product计算的总和,(2)可处理目标的推导和优化,导致改进的泛化界限。通过实证,充分证明了该方法对不确定性估计和泛化的有效性。
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