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Book

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Title

Neural-Symbolic Learning and Reasoning : 18th International Conference, NeSy 2024, Barcelona, Spain, September 9–12, 2024, Proceedings, Part I

Editors

Year of publication

2024

Book type

edited book

Publication language

english

Place

Cham, Switzerland

Publisher name

Springer

Publisher name from the Ministry list

Springer

Date of publication

2024

Number of pages

421

ISBN

978-3-031-71166-4

eISBN

978-3-031-71167-1

DOI

10.1007/978-3-031-71167-1

URL

https://link.springer.com/book/10.1007/978-3-031-71167-1

Published in

Book series: Lecture Notes in Computer Science

Number in series

vol. 14979

Chapters
Disentangling Visual Priors: Unsupervised Learning of Scene Interpretations with Compositional Autoencoder (p. 240-256)
Learning to Solve Abstract Reasoning Problems with Neurosymbolic Program Synthesis and Task Generation (p. 386-402)
Conference

18th International Conference on Neural-Symbolic Learning and Reasoning NeSy 2024, 9-12.09.2024, Barcelona, Spain

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