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The benefits of ordinal regression under domain shift

conference contribution
posted on 2024-08-30, 13:49 authored by Andrew PerrettAndrew Perrett, James BrownJames Brown, Petra BosiljPetra Bosilj

Deep neural networks (DNNs) are trained under the assumption that the training data are independent and identically distributed. In the real world, autonomous systems typically receive out of distribution images causing a domain shift that hinders performance. One

important consideration in the context of ordinal image data (i.e., their labels have an intrinsic order) is the choice of loss function and whether it takes the ordinality into account. In this paper, we examine the benefits of ordinal formulations over nominal classification using a human age estimation task. Experiments using DNNs with ordinal data suggest that performance on out of distribution data can be improved by over 240% if trained using ordinal regression methods as compared to classification.

Funding

EPSRC Centre for Doctoral Training in Agri-Food Robotics: AgriFoRwArdS

Engineering and Physical Sciences Research Council

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History

School affiliated with

  • College of Health and Science (Research Outputs)
  • School of Computer Science (Research Outputs)

Publication Title

Towards Autonomous Robotic Systems: 25th Annual Conference, TAROS 2024, London, UK, August 21–23, 2024, Proceedings

Publisher

Springer Cham

ISSN

0302-9743

eISSN

1611-3349

ISBN

978-3-031-72058-1

eISBN

978-3-031-72059-8

Date Accepted

2024-07-01

Date of Final Publication

2024-11-02

Funder

EPSRC

Event Name

25th TAROS Conference 2024

Event Dates

21-23 August 2024

Open Access Status

  • Not Open Access

Publisher statement

Springer Nature Terms of Use for accepted manuscripts of subscription articles, books and chapters apply: https://www.springernature.com/gp/open-science/policies/accepted-manuscript-terms

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