SOTAVerified

Deep learning for Chemometric and non-translational data

2019-10-01Code Available0· sign in to hype

Jacob Søgaard Larsen, Line Clemmensen

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

We propose a novel method to train deep convolutional neural networks which learn from multiple data sets of varying input sizes through weight sharing. This is an advantage in chemometrics where individual measurements represent exact chemical compounds and thus signals cannot be translated or resized without disturbing their interpretation. Our approach show superior performance compared to transfer learning when a medium sized and a small data set are trained together. While we observe a small improvement compared to individual training when two medium sized data sets are trained together, in particular through a reduction in the variance.

Tasks

Reproductions