Książka Structured Representation Learning Yue Song

Structured Representation Learning

From Homomorphisms and Disentanglement to Equivariance and Topography

Język: Angielski
Oprawa: Twarda
Wydawca: Springer, Berlin
Dostępność: Dostępna u dostawcy
Wysyłamy za 10-13 dni
187.11
This book introduces approaches to generalize the benefits of equivariant deep learning to a broader...

Informacje o książce

Język
Angielski
Oprawa
Książka - Twarda
Data wydania
2025
strony
140
EAN
9783031881107
Enbook ID
48096883
Waga
440
Wymiary
168 x 240

Pełny opis

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. 

Możesz być zainteresowany

Novum Organum II

Chris Edwards
152.06

Art of Allegiance

Michael Schreffler
352.23

Warpaint

Holly Lisle
75.73

Klienci, którzy kupili tę książkę, kupili również

Si, Par Miracle

Michael Kutz
49.64