Yue Song Thomas Anderson Keller Nicu Sebe Max Welling (Auteur) Paru en mai 2025 (ebook (ePub)) en anglais

Structured Representation Learning

From Homomorphisms and Disentanglement to Equivariance and Topography

Structured Representation Learning - 1
Résumé
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This book introduces approaches to generalize the benefits of equivariant deep learning to a broader set of learned structures through learned homomorphisms. In the field of machine learning, the idea of incorporating knowledge of data symmetries into artificial neural networks is known as equivariant deep learning and has led to the development of cutting edge architectures for image and physical data processing. The power of these models originates from data-specific structures ingrained in them through careful...
Caractéristiques
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Date de parution

mai 2025

Editeur

Springer Vienne

Format

ebook (ePub)

Type de DRM

Adobe DRM

Prix Prix Fnac

42,72 €

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Résumé

This book introduces approaches to generalize the benefits of equivariant deep learning to a broader set of learned structures through learned homomorphisms. In the field of machine learning, the idea of incorporating knowledge of data symmetries into artificial neural networks is known as equivariant deep learning and has led to the development of cutting edge architectures for image and physical data processing. The power of these models originates from data-specific structures ingrained in them through careful engineering. To-date however, the ability for practitioners to build such a structure into models is limited to situations where the data must exactly obey specific mathematical symmetries. The authors discuss naturally inspired inductive biases, specifically those which may provide types of efficiency and generalization benefits through what are known as homomorphic representations, a new general type of structured representation inspired from techniques in physics and neuroscience. A review of some of the first attempts at building models with learned homomorphic representations are introduced. The authors demonstrate that these inductive biases improve the ability of models to represent natural transformations and ultimately pave the way to the future of efficient and effective artificial neural networks.

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Caractéristiques

Auteur

Yue Song

Thomas Anderson Keller

Nicu Sebe

Max Welling

Editeur

Springer Vienne

Date de parution

mai 2025

Collection

Synthesis Collection of Technology (R0)

EAN

9783031881114

ISBN

9783031881114

Type de DRM

Adobe DRM

Droit d'impression

Non autorisé

Droit de Copier/Coller

Non autorisé

Compris dans l'abonnement ebooks

Non

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Résumé sur l’accessibilité : This PDF does not fully comply with PDF/UA standards, but does feature limited screen reader support, described non-text content (images, graphs), bookmarks for easy navigation and searchable, selectable text. Users of assistive technologies may experience difficulty navigating or interpreting content in this document. We recognize the importance of accessibility, and we welcome queries about accessibility for any of our products. If you have a question or an access need, please get in touch with us at accessibilitysupport@springernature.com.

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20515456

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