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Learning Extremal Representations with Deep Archetypal Analysis
JournalArticle (Originalarbeit in einer wissenschaftlichen Zeitschrift)
 
ID 4615444
Author(s) Keller, Sebastian Mathias; Samarin, Maxim; Arend Torres, Fabricio; Wieser, Mario; Roth, Volker
Author(s) at UniBasel Samarin, Maxim
Arend Torres, Fabricio
Wieser, Mario
Roth, Volker
Keller, Sebastian Mathias
Year 2021
Title Learning Extremal Representations with Deep Archetypal Analysis
Journal International Journal of Computer Vision
Volume 129
Number 4
Pages / Article-Number 805-820
Keywords Archetypal analysis; Chemical autoencoder; Deep variational information bottleneck; Dimensionality reduction; Generative modeling; Sentiment analysis
Abstract Archetypes represent extreme manifestations of a population with respect to specific characteristic traits or features. In linear feature space, archetypes approximate the data convex hull allowing all data points to be expressed as convex mixtures of archetypes. As mixing of archetypes is performed directly on the input data, linear Archetypal Analysis requires additivity of the input, which is a strong assumption unlikely to hold e.g. in case of image data. To address this problem, we propose learning an appropriate latent feature space while simultaneously identifying suitable archetypes. We thus introduce a generative formulation of the linear archetype model, parameterized by neural networks. By introducing the distance-dependent archetype loss, the linear archetype model can be integrated into the latent space of a deep variational information bottleneck and an optimal representation, together with the archetypes, can be learned end-to-end. Moreover, the information bottleneck framework allows for a natural incorporation of arbitrarily complex side information during training. As a consequence, learned archetypes become easily interpretable as they derive their meaning directly from the included side information. Applicability of the proposed method is demonstrated by exploring archetypes of female facial expressions while using multi-rater based emotion scores of these expressions as side information. A second application illustrates the exploration of the chemical space of small organic molecules. By using different kinds of side information we demonstrate how identified archetypes, along with their interpretation, largely depend on the side information provided.
Publisher Springer
ISSN/ISBN 0920-5691 ; 1573-1405
URL https://static-content.springer.com/esm/art%3A10.1007%2Fs11263-020-01390-3/MediaObjects/11263_2020_1390_MOESM1_ESM.pdf
edoc-URL https://edoc.unibas.ch/81729/
Full Text on edoc Available
Digital Object Identifier DOI 10.1007/s11263-020-01390-3
PubMed ID http://www.ncbi.nlm.nih.gov/pubmed/34720403
ISI-Number WOS:000601485200001
Document type (ISI) Journal Article
 
   

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09/05/2024