Convex Dual Theory Analysis of Two-Layer Convolutional Neural Networks with Soft-Thresholding

04/14/2023
by   Chunyan Xiong, et al.
0

Soft-thresholding has been widely used in neural networks. Its basic network structure is a two-layer convolution neural network with soft-thresholding. Due to the network's nature of nonlinearity and nonconvexity, the training process heavily depends on an appropriate initialization of network parameters, resulting in the difficulty of obtaining a globally optimal solution. To address this issue, a convex dual network is designed here. We theoretically analyze the network convexity and numerically confirm that the strong duality holds. This conclusion is further verified in the linear fitting and denoising experiments. This work provides a new way to convexify soft-thresholding neural networks.

READ FULL TEXT
research
12/09/2020

Convex Regularization Behind Neural Reconstruction

Neural networks have shown tremendous potential for reconstructing high-...
research
02/22/2020

Convex Duality of Deep Neural Networks

We study regularized deep neural networks and introduce an analytic fram...
research
04/14/2021

Fast Walsh-Hadamard Transform and Smooth-Thresholding Based Binary Layers in Deep Neural Networks

In this paper, we propose a novel layer based on fast Walsh-Hadamard tra...
research
05/15/2020

Convex Shape Prior for Deep Neural Convolution Network based Eye Fundus Images Segmentation

Convex Shapes (CS) are common priors for optic disc and cup segmentation...
research
04/20/2021

Bridging between soft and hard thresholding by scaling

In this article, we developed and analyzed a thresholding method in whic...
research
09/12/2023

Optimization Guarantees of Unfolded ISTA and ADMM Networks With Smooth Soft-Thresholding

Solving linear inverse problems plays a crucial role in numerous applica...
research
01/31/2020

Learning Deep Analysis Dictionaries – Part I: Unstructured Dictionaries

Inspired by the recent success of Deep Neural Networks and the recent ef...

Please sign up or login with your details

Forgot password? Click here to reset