Přístupnostní navigace
E-application
Search Search Close
Publication detail
VRÁBEL, J. KÉPEŠ, E. POŘÍZKA, P. KAISER, J.
Original Title
Physics-informed ML models for processing of spectroscopic data
Type
abstract
Language
English
Original Abstract
Massive adoption of machine learning (ML) techniques in spectroscopy brought entirely new possibilities in analytical performance for applications, and also for basic research. However, several problems emerged, e.g. ML models are often utilized as “black-boxes”, or considerably overtrained. Another issue is a blind transition of successful models (architecture, parameters) from distinct applications (e.g. image processing) to spectroscopic tasks, without taking into account the properties of data. We study the influence of (spectroscopic) data properties and incorporate them into ML models in form of weight initializations, specific parameter penalizations, and invariances. This leads to an increased analytical performance of models and better interpretability.
Keywords
machine learning, interpretability, spectroscopic data, neural networks, deep learning
Authors
VRÁBEL, J.; KÉPEŠ, E.; POŘÍZKA, P.; KAISER, J.
Released
24. 8. 2021
BibTex
@misc{BUT172427, author="Jakub {Vrábel} and Erik {Képeš} and Pavel {Pořízka} and Jozef {Kaiser}", title="Physics-informed ML models for processing of spectroscopic data", year="2021", note="abstract" }