Training Neural Networks for Solving 1-D Optimal Piecewise Linear Approximation

10/14/2021
by   Hangcheng Dong, et al.
0

Recently, the interpretability of deep learning has attracted a lot of attention. A plethora of methods have attempted to explain neural networks by feature visualization, saliency maps, model distillation, and so on. However, it is hard for these methods to reveal the intrinsic properties of neural networks. In this work, we studied the 1-D optimal piecewise linear approximation (PWLA) problem, and associated it with a designed neural network, named lattice neural network (LNN). We asked four essential questions as following: (1) What are the characters of the optimal solution of the PWLA problem? (2) Can an LNN converge to the global optimum? (3) Can an LNN converge to the local optimum? (4) Can an LNN solve the PWLA problem? Our main contributions are that we propose the theorems to characterize the optimal solution of the PWLA problem and present the LNN method for solving it. We evaluated the proposed LNNs on approximation tasks, forged an empirical method to improve the performance of LNNs. The experiments verified that our LNN method is competitive with the start-of-the-art method.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/07/2019

Towards Understanding the Importance of Noise in Training Neural Networks

Numerous empirical evidence has corroborated that the noise plays a cruc...
research
06/20/2022

Simultaneous approximation of a smooth function and its derivatives by deep neural networks with piecewise-polynomial activations

This paper investigates the approximation properties of deep neural netw...
research
05/17/2019

Sequential training algorithm for neural networks

A sequential training method for large-scale feedforward neural networks...
research
02/03/2021

Generative deep learning for decision making in gas networks

A decision support system relies on frequent re-solving of similar probl...
research
12/02/2020

The Self-Simplifying Machine: Exploiting the Structure of Piecewise Linear Neural Networks to Create Interpretable Models

Today, it is more important than ever before for users to have trust in ...
research
02/15/2019

SVM-based Deep Stacking Networks

The deep network model, with the majority built on neural networks, has ...

Please sign up or login with your details

Forgot password? Click here to reset