Cristin-resultat-ID: 2047118
Sist endret: 20. februar 2023, 13:38
NVI-rapporteringsår: 2022
Resultat
Vitenskapelig artikkel
2022

My Health Sensor, My Classifier - Adapting a Trained Classifier to Unlabeled End-User Data

Bidragsytere:
  • Konstantinos Nikolaidis
  • Stein Kristiansen
  • Thomas Peter Plagemann
  • Vera Hermine Goebel
  • Knut Liestøl
  • Mohan Kankanhalli
  • mfl.

Tidsskrift

ACM Transactions on Computing for Healthcare (HEALTH)
ISSN 2691-1957
e-ISSN 2637-8051
NVI-nivå 1

Om resultatet

Vitenskapelig artikkel
Publiseringsår: 2022
Volum: 3
Hefte: 4
Sider: 1 - 24
Open Access

Importkilder

Scopus-ID: 2-s2.0-85146420900

Beskrivelse Beskrivelse

Tittel

My Health Sensor, My Classifier - Adapting a Trained Classifier to Unlabeled End-User Data

Sammendrag

Sleep apnea is a common yet severely under-diagnosed sleep related disorder. Unattended sleep monitoring at home with low-cost sensors can be leveraged for condition detection, and Machine Learning offers a generalized solution for this task. However, patient characteristics, lack of sufficient training data, and other factors can imply a domain shift between training and end-user data; and reduced task performance. In this work, we address this issue with the aim to achieve personalization based on the patient’s needs. We present an unsupervised domain adaptation (UDA) solution with the constraint that labeled source data are not directly available. Instead, a classifier trained on the source data is provided. Our solution iteratively labels target data sub-regions based on classifier beliefs, and trains new classifiers from the expanding dataset. Experiments with sleep monitoring datasets and various sensors show that our solution outperforms the classifier trained on the source domain, with a kappa coefficient improvement from 0.012 to 0.242. Additionally, we apply our solution to digit classification DA between three well-established datasets, to investigate its generalizability, and allow for related work comparisons. Even without direct access to the source data, it outperforms several well-established UDA methods in these datasets.

Bidragsytere

Konstantinos Nikolaidis

  • Tilknyttet:
    Forfatter
    ved PROG Programmering ved Universitetet i Oslo

Stein Kristiansen

  • Tilknyttet:
    Forfatter
    ved Institutt for informatikk ved Universitetet i Oslo

Thomas Peter Plagemann

  • Tilknyttet:
    Forfatter
    ved PROG Programmering ved Universitetet i Oslo

Vera Hermine Goebel

  • Tilknyttet:
    Forfatter
    ved Forskningsgruppen for programmering og software engineering ved Universitetet i Oslo

Knut Liestøl

  • Tilknyttet:
    Forfatter
    ved Institutt for informatikk ved Universitetet i Oslo
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