The University of Southampton
University of Southampton Institutional Repository

Towards a deeper understanding of sleep stages through their representation in the latent space of variational autoencoders

Towards a deeper understanding of sleep stages through their representation in the latent space of variational autoencoders
Towards a deeper understanding of sleep stages through their representation in the latent space of variational autoencoders

Artificial neural networks show great success in sleep stage classification, with an accuracy comparable to human scoring. While their ability to learn from labelled electroencephalography (EEG) signals is widely researched, the underlying learning processes remain unexplored. Variational autoencoders can capture the underlying meaning of data by encoding it into a low-dimensional space. Regularizing this space furthermore enables the generation of realistic representations of data from latent space samples. We aimed to show that this model is able to generate realistic sleep EEG. In addition, the generated sequences from different areas of the latent space are shown to have inherent meaning. The current results show the potential of variational autoencoders in understanding sleep EEG data from the perspective of unsupervised machine learning.

1530-1605
3111-3120
IEEE Computer Society
Biedebach, Luka
35f63dbe-4f6f-4f27-b007-52708d3a89af
Rusanen, Matias
e539d059-004b-4e94-92e8-7ff931245fd3
Pórðarson, Benedikt Hólm
1129c985-1454-4c79-acaf-7880eed680a1
Arnardóttir, Erna Sif
9bfbbe32-8214-47a9-86ba-43be85458830
Óskarsdóttir, María
d159ed8f-9dd3-4ff3-8b00-d43579ab71be
Nikkonen, Sami
ab1dd686-c5b7-49c8-be3a-6c3eeef07d6f
Korkalainen, Henri
a58733d0-a127-4ac2-93b4-431dfbac94eb
Myllymaa, Sami
95d0dda5-ff2c-4f93-8357-2c2e1e9d2379
Töyräs, Juha
d12501f8-5b0f-46cd-95f1-7c8f178b2312
Kainulainen, Samu
8f8f7fc9-c606-4bdd-84d7-0cc5e6f1e644
Leppänen, Timo
823b7fba-368c-4ebd-8bef-538e3829d725
Islind, Anna Sigridur
46e6353f-a1b6-4628-916c-18e817695d03
Bui, Tung X.
Biedebach, Luka
35f63dbe-4f6f-4f27-b007-52708d3a89af
Rusanen, Matias
e539d059-004b-4e94-92e8-7ff931245fd3
Pórðarson, Benedikt Hólm
1129c985-1454-4c79-acaf-7880eed680a1
Arnardóttir, Erna Sif
9bfbbe32-8214-47a9-86ba-43be85458830
Óskarsdóttir, María
d159ed8f-9dd3-4ff3-8b00-d43579ab71be
Nikkonen, Sami
ab1dd686-c5b7-49c8-be3a-6c3eeef07d6f
Korkalainen, Henri
a58733d0-a127-4ac2-93b4-431dfbac94eb
Myllymaa, Sami
95d0dda5-ff2c-4f93-8357-2c2e1e9d2379
Töyräs, Juha
d12501f8-5b0f-46cd-95f1-7c8f178b2312
Kainulainen, Samu
8f8f7fc9-c606-4bdd-84d7-0cc5e6f1e644
Leppänen, Timo
823b7fba-368c-4ebd-8bef-538e3829d725
Islind, Anna Sigridur
46e6353f-a1b6-4628-916c-18e817695d03
Bui, Tung X.

Biedebach, Luka, Rusanen, Matias, Pórðarson, Benedikt Hólm, Arnardóttir, Erna Sif, Óskarsdóttir, María, Nikkonen, Sami, Korkalainen, Henri, Myllymaa, Sami, Töyräs, Juha, Kainulainen, Samu, Leppänen, Timo and Islind, Anna Sigridur (2023) Towards a deeper understanding of sleep stages through their representation in the latent space of variational autoencoders. Bui, Tung X. (ed.) In Proceedings of the 56th Annual Hawaii International Conference on System Sciences, HICSS 2023. vol. 2023-January, IEEE Computer Society. pp. 3111-3120 .

Record type: Conference or Workshop Item (Paper)

Abstract

Artificial neural networks show great success in sleep stage classification, with an accuracy comparable to human scoring. While their ability to learn from labelled electroencephalography (EEG) signals is widely researched, the underlying learning processes remain unexplored. Variational autoencoders can capture the underlying meaning of data by encoding it into a low-dimensional space. Regularizing this space furthermore enables the generation of realistic representations of data from latent space samples. We aimed to show that this model is able to generate realistic sleep EEG. In addition, the generated sequences from different areas of the latent space are shown to have inherent meaning. The current results show the potential of variational autoencoders in understanding sleep EEG data from the perspective of unsupervised machine learning.

This record has no associated files available for download.

More information

Published date: 2023
Additional Information: Publisher Copyright: © 2023 IEEE Computer Society. All rights reserved.
Venue - Dates: 56th Annual Hawaii International Conference on System Sciences, HICSS 2023, , Maui, United States, 2023-01-03 - 2023-01-06

Identifiers

Local EPrints ID: 507846
URI: http://eprints.soton.ac.uk/id/eprint/507846
ISSN: 1530-1605
PURE UUID: f3833b0b-d0d3-460f-a877-e9c53899e550
ORCID for María Óskarsdóttir: ORCID iD orcid.org/0000-0001-5095-5356

Catalogue record

Date deposited: 06 Jan 2026 18:03
Last modified: 08 Jan 2026 03:27

Export record

Contributors

Author: Luka Biedebach
Author: Matias Rusanen
Author: Benedikt Hólm Pórðarson
Author: Erna Sif Arnardóttir
Author: María Óskarsdóttir ORCID iD
Author: Sami Nikkonen
Author: Henri Korkalainen
Author: Sami Myllymaa
Author: Juha Töyräs
Author: Samu Kainulainen
Author: Timo Leppänen
Author: Anna Sigridur Islind
Editor: Tung X. Bui

Download statistics

Downloads from ePrints over the past year. Other digital versions may also be available to download e.g. from the publisher's website.

View more statistics

Atom RSS 1.0 RSS 2.0

Contact ePrints Soton: eprints@soton.ac.uk

ePrints Soton supports OAI 2.0 with a base URL of http://eprints.soton.ac.uk/cgi/oai2

This repository has been built using EPrints software, developed at the University of Southampton, but available to everyone to use.

We use cookies to ensure that we give you the best experience on our website. If you continue without changing your settings, we will assume that you are happy to receive cookies on the University of Southampton website.

×