Degrees of Freedom Analysis of Unrolled Neural Networks

06/10/2019
by   Morteza Mardani, et al.
5

Unrolled neural networks emerged recently as an effective model for learning inverse maps appearing in image restoration tasks. However, their generalization risk (i.e., test mean-squared-error) and its link to network design and train sample size remains mysterious. Leveraging the Stein's Unbiased Risk Estimator (SURE), this paper analyzes the generalization risk with its bias and variance components for recurrent unrolled networks. We particularly investigate the degrees-of-freedom (DOF) component of SURE, trace of the end-to-end network Jacobian, to quantify the prediction variance. We prove that DOF is well-approximated by the weighted path sparsity of the network under incoherence conditions on the trained weights. Empirically, we examine the SURE components as a function of train sample size for both recurrent and non-recurrent (with many more parameters) unrolled networks. Our key observations indicate that: 1) DOF increases with train sample size and converges to the generalization risk for both recurrent and non-recurrent schemes; 2) recurrent network converges significantly faster (with less train samples) compared with non-recurrent scheme, hence recurrence serves as a regularization for low sample size regimes.

READ FULL TEXT
research
05/22/2023

The Mean Squared Error of the Ridgeless Least Squares Estimator under General Assumptions on Regression Errors

In recent years, there has been a significant growth in research focusin...
research
09/10/2018

Approximation and Estimation for High-Dimensional Deep Learning Networks

It has been experimentally observed in recent years that multi-layer art...
research
12/06/2021

Pearson's goodness-of-fit tests for sparse distributions

Pearson's chi-squared test is widely used to test the goodness of fit be...
research
04/05/2022

Theoretical properties of Bayesian Student-t linear regression

Student-t linear regression is a commonly used alternative to the normal...
research
02/24/2019

De-Biasing The Lasso With Degrees-of-Freedom Adjustment

This paper studies schemes to de-bias the Lasso in sparse linear regress...
research
06/29/2021

Predictive Model Degrees of Freedom in Linear Regression

Overparametrized interpolating models have drawn increasing attention fr...
research
02/20/2020

Safe Counterfactual Reinforcement Learning

We develop a method for predicting the performance of reinforcement lear...

Please sign up or login with your details

Forgot password? Click here to reset