Abstract
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 tra-ditional AA methods to handle the subjective nature of questionnaire-based data, acknowledging individual differ-ences in scale perception. We introduce the Response Bias Ordinal Archetypal Analysis (RBOAA), which learns indi-vidualized 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 behav-ior 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.
Original language | English |
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Title of host publication | 34th IEEE International Workshop on Machine Learning for Signal Processing, MLSP 2024 - Proceedings : Workshop Proceedings |
Editors | Geoffrey Ye Li, Danilo Mandic |
Number of pages | 6 |
Place of Publication | Los Alamitos |
Publisher | IEEE |
Publication date | 2024 |
ISBN (Print) | 9798350372250 |
ISBN (Electronic) | 9798350372250 |
DOIs | |
Publication status | Published - 2024 |
Event | The 34th IEEE International Workshop on Machine Learning for Signal Processing. MLSP 2024 - London, United Kingdom Duration: 22 Sept 2024 → 25 Sept 2024 Conference number: 34 https://signalprocessingsociety.org/blog/mlsp-2024-2024-ieee-international-workshop-machine-learning-signal-processing |
Conference
Conference | The 34th IEEE International Workshop on Machine Learning for Signal Processing. MLSP 2024 |
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Number | 34 |
Country/Territory | United Kingdom |
City | London |
Period | 22/09/2024 → 25/09/2024 |
Internet address |
Series | IEEE International Workshop on Machine Learning for Signal Processing. |
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ISSN | 1551-2541 |