Differentiable Bayesian Neural Network Inference for Data Streams

07/12/2019
by   Namuk Park, et al.
0

While deep neural networks (NNs) do not provide the confidence of its prediction, Bayesian neural network (BNN) can estimate the uncertainty of the prediction. However, BNNs have not been widely used in practice due to the computational cost of inference. This prohibitive computational cost is a hindrance especially when processing stream data with low-latency. To address this problem, we propose a novel model which approximate BNNs for data streams. Instead of generating separate prediction for each data sample independently, this model estimates the increments of prediction for a new data sample from the previous predictions. The computational cost of this model is almost the same as that of non-Bayesian NNs. Experiments with semantic segmentation on real-world data show that this model performs significantly faster than BNNs, estimating uncertainty comparable to the results of BNNs.

READ FULL TEXT
research
10/29/2018

Principled Uncertainty Estimation for Deep Neural Networks

When the cost of misclassifying a sample is high, it is useful to have a...
research
05/06/2022

Scalable computation of prediction intervals for neural networks via matrix sketching

Accounting for the uncertainty in the predictions of modern neural netwo...
research
02/26/2021

NOMU: Neural Optimization-based Model Uncertainty

We introduce a new approach for capturing model uncertainty for neural n...
research
11/29/2022

Differentiable User Models

Probabilistic user modeling is essential for building collaborative AI s...
research
06/07/2019

DropConnect Is Effective in Modeling Uncertainty of Bayesian Deep Networks

Deep neural networks (DNNs) have achieved state-of-the-art performances ...
research
10/15/2019

Neural Approximation of an Auto-Regressive Process through Confidence Guided Sampling

We propose a generic confidence-based approximation that can be plugged ...
research
06/12/2022

Variational Bayes Deep Operator Network: A data-driven Bayesian solver for parametric differential equations

Neural network based data-driven operator learning schemes have shown tr...

Please sign up or login with your details

Forgot password? Click here to reset