A multiobjective continuation method to compute the regularization path of deep neural networks

08/23/2023
by   Augustina C. Amakor, et al.
0

Sparsity is a highly desired feature in deep neural networks (DNNs) since it ensures numerical efficiency, improves the interpretability of models (due to the smaller number of relevant features), and robustness. In machine learning approaches based on linear models, it is well known that there exists a connecting path between the sparsest solution in terms of the ℓ^1 norm (i.e., zero weights) and the non-regularized solution, which is called the regularization path. Very recently, there was a first attempt to extend the concept of regularization paths to DNNs by means of treating the empirical loss and sparsity (ℓ^1 norm) as two conflicting criteria and solving the resulting multiobjective optimization problem. However, due to the non-smoothness of the ℓ^1 norm and the high number of parameters, this approach is not very efficient from a computational perspective. To overcome this limitation, we present an algorithm that allows for the approximation of the entire Pareto front for the above-mentioned objectives in a very efficient manner. We present numerical examples using both deterministic and stochastic gradients. We furthermore demonstrate that knowledge of the regularization path allows for a well-generalizing network parametrization.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/18/2017

Stochastic Weighted Function Norm Regularization

Deep neural networks (DNNs) have become increasingly important due to th...
research
05/17/2018

Minimax regularization

Classical approach to regularization is to design norms enhancing smooth...
research
07/20/2020

Learning Sparse Filters in Deep Convolutional Neural Networks with a l1/l2 Pseudo-Norm

While deep neural networks (DNNs) have proven to be efficient for numero...
research
10/18/2021

Path Regularization: A Convexity and Sparsity Inducing Regularization for Parallel ReLU Networks

Despite several attempts, the fundamental mechanisms behind the success ...
research
12/14/2020

On the Treatment of Optimization Problems with L1 Penalty Terms via Multiobjective Continuation

We present a novel algorithm that allows us to gain detailed insight int...
research
12/04/2017

Learning Sparse Neural Networks through L_0 Regularization

We propose a practical method for L_0 norm regularization for neural net...
research
10/28/2018

Learning Sparse Neural Networks via Sensitivity-Driven Regularization

The ever-increasing number of parameters in deep neural networks poses c...

Please sign up or login with your details

Forgot password? Click here to reset