Point classification with Runge-Kutta networks and feature space augmentation

04/06/2021
by   Elisa Giesecke, et al.
19

In this paper we combine an approach based on Runge-Kutta Nets considered in [Benning et al., J. Comput. Dynamics, 9, 2019] and a technique on augmenting the input space in [Dupont et al., NeurIPS, 2019] to obtain network architectures which show a better numerical performance for deep neural networks in point classification problems. The approach is illustrated with several examples implemented in PyTorch.

READ FULL TEXT

page 10

page 11

page 18

page 19

research
05/03/2021

Estimation of underreporting in Brazilian tuberculosis data, 2012-2014

Analysis of burden of underregistration in tuberculosis data in Brazil, ...
research
03/27/2017

Theoretical Evaluation of Li et al.'s Approach for Improving a Binary Watermark-Based Scheme in Remote Sensing Data Communications

This letter is about a principal weakness of the published article by Li...
research
05/06/2021

Probablistic Bigraphs

Bigraphs are a universal computational modelling formalism for the spati...
research
01/15/2013

The Neural Representation Benchmark and its Evaluation on Brain and Machine

A key requirement for the development of effective learning representati...
research
06/07/2022

Multi-qubit doilies: enumeration for all ranks and classification for ranks four and five

For N ≥ 2, an N-qubit doily is a doily living in the N-qubit symplectic ...
research
08/21/2017

Deep vs. Diverse Architectures for Classification Problems

This study compares various superlearner and deep learning architectures...
research
07/05/2018

Calamari - A High-Performance Tensorflow-based Deep Learning Package for Optical Character Recognition

Optical Character Recognition (OCR) on contemporary and historical data ...

Please sign up or login with your details

Forgot password? Click here to reset