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Stress Functions for Supervised Dimensionality Reduction

Sylvain Lespinats, Benoit Colange and Denys Dutykh
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Sylvain Lespinats: Grenoble Alpes University, National Institute of Solar Energy (INES)
Benoit Colange: Grenoble Alpes University, National Institute of Solar Energy (INES)
Denys Dutykh: Université Grenoble Alpes, Université Savoie Mont Blanc, Campus Scientifique, CNRS - LAMA UMR 5127

Chapter Chapter 6 in Nonlinear Dimensionality Reduction Techniques, 2022, pp 119-156 from Springer

Abstract: Abstract In the general case, Dimensionality Reduction (DR) is an unsupervised task. Indeed, it does not necessitate data annotations, as opposed to classification for which the desired output must be provided for a training set. Yet, DR is sometimes applied to datasets for which such annotations are available (e.g., class-information). In this context, supervised dimensionality reduction methods seek to take advantage of that information to improve the representation of the data structure.

Date: 2022
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DOI: 10.1007/978-3-030-81026-9_6

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