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Open AccessProceedings Article

Deep Neural Networks as Gaussian Processes

TLDR
The exact equivalence between infinitely wide deep networks and GPs is derived and it is found that test performance increases as finite-width trained networks are made wider and more similar to a GP, and thus that GP predictions typically outperform those of finite- width networks.
Abstract
It has long been known that a single-layer fully-connected neural network with an i.i.d. prior over its parameters is equivalent to a Gaussian process (GP), in the limit of infinite network width. This correspondence enables exact Bayesian inference for infinite width neural networks on regression tasks by means of evaluating the corresponding GP. Recently, kernel functions which mimic multi-layer random neural networks have been developed, but only outside of a Bayesian framework. As such, previous work has not identified that these kernels can be used as covariance functions for GPs and allow fully Bayesian prediction with a deep neural network. In this work, we derive the exact equivalence between infinitely wide deep networks and GPs. We further develop a computationally efficient pipeline to compute the covariance function for these GPs. We then use the resulting GPs to perform Bayesian inference for wide deep neural networks on MNIST and CIFAR-10. We observe that trained neural network accuracy approaches that of the corresponding GP with increasing layer width, and that the GP uncertainty is strongly correlated with trained network prediction error. We further find that test performance increases as finite-width trained networks are made wider and more similar to a GP, and thus that GP predictions typically outperform those of finite-width networks. Finally we connect the performance of these GPs to the recent theory of signal propagation in random neural networks.

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On the relationship between multitask neural networks and multitask Gaussian Processes

TL;DR: This work establishes a formal connection between MTDNN with infinitely-wide hidden layers and multitask Gaussian Process (GP), derive multitask GP kernels corresponding to both single-layer and deep multitask Bayesian neural networks (MTBNN), and shows that information among different tasks is shared primarily due to correlation across last layer weights of MTBNN and shared hyper-parameters.

Density-Softmax: Scalable and Calibrated Uncertainty Estimation under Distribution Shifts

Anqi Liu
TL;DR: Density-Softmax as discussed by the authors is a deterministic method to improve calibrated uncertainty estimation via a combination of density function with the softmax layer, which produces more uncertain predictions when test samples are distant from the training samples.
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On the Correspondence between Gaussian Processes and Geometric Harmonics.

TL;DR: In this paper, the correspondence between Gaussian process regression and geometric harmonics is discussed, providing alternative interpretations of uncertainty in terms of error estimation, or leading towards accelerated Bayesian Optimization due to dimensionality reduction.
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The Nonlinearity Coefficient - A Practical Guide to Neural Architecture Design.

George Philipp
- 25 May 2021 - 
TL;DR: The zero-shot architecture design (ZSAD) as mentioned in this paper is an approach to architecture design that can predict, without any training, whether an architecture will achieve a relatively high test or training error on a task after training.
References
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Proceedings Article

Adam: A Method for Stochastic Optimization

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TL;DR: Bayesian Learning for Neural Networks shows that Bayesian methods allow complex neural network models to be used without fear of the "overfitting" that can occur with traditional neural network learning methods.
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A Unifying View of Sparse Approximate Gaussian Process Regression

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TL;DR: In this article, the authors introduce stochastic variational inference for Gaussian process models, which enables the application of Gaussian Process (GP) models to data sets containing millions of data points.