Laplace Approximation with Diagonalized Hessian for Over-parameterized Neural Networks
Ming Gui · Ziqing Zhao · Tianming Qiu · Hao Shen
Abstract
Bayesian Neural Networks (BNNs) provide valid uncertainty estimation on their feedforward outputs. However, it can become computationally prohibitive to apply them to modern large-scale neural networks. In this work, we combine Laplace approximation with linearized inference for a real-time and robust uncertainty evaluation. Specifically, we study the effectiveness and computational necessity of a diagonal Hessian approximation in Laplace approximation on over-parameterized networks. The proposed approach is investigated on object detection tasks in an autonomous driving scenario and demonstrates faster inference speed and convincing results.
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