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Main Authors: Wedenborg, Anna Emilie J., Harborg, Michael Alexander, Bigom, Andreas, Elmgreen, Oliver, Presutti, Marcus, Råskov, Andreas, Glückstad, Fumiko Kano, Schmidt, Mikkel, Mørup, Morten
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2409.07934
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author Wedenborg, Anna Emilie J.
Harborg, Michael Alexander
Bigom, Andreas
Elmgreen, Oliver
Presutti, Marcus
Råskov, Andreas
Glückstad, Fumiko Kano
Schmidt, Mikkel
Mørup, Morten
author_facet Wedenborg, Anna Emilie J.
Harborg, Michael Alexander
Bigom, Andreas
Elmgreen, Oliver
Presutti, Marcus
Råskov, Andreas
Glückstad, Fumiko Kano
Schmidt, Mikkel
Mørup, Morten
contents This paper introduces a novel framework for Archetypal Analysis (AA) tailored to ordinal data, particularly from questionnaires. Unlike existing methods, the proposed method, Ordinal Archetypal Analysis (OAA), bypasses the two-step process of transforming ordinal data into continuous scales and operates directly on the ordinal data. We extend traditional AA methods to handle the subjective nature of questionnaire-based data, acknowledging individual differences in scale perception. We introduce the Response Bias Ordinal Archetypal Analysis (RBOAA), which learns individualized scales for each subject during optimization. The effectiveness of these methods is demonstrated on synthetic data and the European Social Survey dataset, highlighting their potential to provide deeper insights into human behavior and perception. The study underscores the importance of considering response bias in cross-national research and offers a principled approach to analyzing ordinal data through Archetypal Analysis.
format Preprint
id arxiv_https___arxiv_org_abs_2409_07934
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Modeling Human Responses by Ordinal Archetypal Analysis
Wedenborg, Anna Emilie J.
Harborg, Michael Alexander
Bigom, Andreas
Elmgreen, Oliver
Presutti, Marcus
Råskov, Andreas
Glückstad, Fumiko Kano
Schmidt, Mikkel
Mørup, Morten
Machine Learning
This paper introduces a novel framework for Archetypal Analysis (AA) tailored to ordinal data, particularly from questionnaires. Unlike existing methods, the proposed method, Ordinal Archetypal Analysis (OAA), bypasses the two-step process of transforming ordinal data into continuous scales and operates directly on the ordinal data. We extend traditional AA methods to handle the subjective nature of questionnaire-based data, acknowledging individual differences in scale perception. We introduce the Response Bias Ordinal Archetypal Analysis (RBOAA), which learns individualized scales for each subject during optimization. The effectiveness of these methods is demonstrated on synthetic data and the European Social Survey dataset, highlighting their potential to provide deeper insights into human behavior and perception. The study underscores the importance of considering response bias in cross-national research and offers a principled approach to analyzing ordinal data through Archetypal Analysis.
title Modeling Human Responses by Ordinal Archetypal Analysis
topic Machine Learning
url https://arxiv.org/abs/2409.07934