Hypergraph Computation - Gao, Yue
- Format: Broché Voir le descriptif
Vous en avez un à vendre ?
Vendez-le-vôtre40,77 €
Occasion · Comme Neuf
Ou 10,19 € /mois
- Livraison : 0,00 €
- Livré entre le 16 et le 25 avril
- Payez directement sur Rakuten (CB, PayPal, 4xCB...)
- Récupérez le produit directement chez le vendeur
- Rakuten vous rembourse en cas de problème
Gratuit et sans engagement
Félicitations !
Nous sommes heureux de vous compter parmi nos membres du Club Rakuten !
TROUVER UN MAGASIN
Retour
Avis sur Hypergraph Computation de Gao, Yue Format Broché - Livre Informatique
0 avis sur Hypergraph Computation de Gao, Yue Format Broché - Livre Informatique
Donnez votre avis et cumulez 5
Les avis publiés font l'objet d'un contrôle automatisé de Rakuten.
-
Dragon Quest 8 - Guide Stratégique Officiel
23 avis
Occasion dès 42,15 €
-
Peter Doig
1 avis
Neuf dès 74,71 €
Occasion dès 51,58 €
-
Mark Morrisroe
Neuf dès 51,58 €
Occasion dès 42,45 €
-
Love On The Left Bank
1 avis
Neuf dès 40,50 €
-
Larousse Menager Illustre 1926
Occasion dès 50,00 €
-
Streamlit For Data Science - Second Edition
Neuf dès 67,95 €
Occasion dès 25,00 €
-
Helen Levitt
Neuf dès 49,70 €
Occasion dès 44,00 €
-
Karsh: A Biography In Images
Neuf dès 44,20 €
Occasion dès 42,57 €
-
Crochet Moderne
Occasion dès 26,00 €
-
The Epiphone Guitar Book
Neuf dès 33,75 €
-
Epigrammes, Tome Ii, 1re Partie (Livres Viii-Xii)
Occasion dès 35,80 €
-
Writing The Book Of The World
Neuf dès 43,22 €
-
Perfectionnement Allemand
2 avis
Occasion dès 24,21 €
-
Rethinking Metaphysics
Neuf dès 39,38 €
-
Textes Allemands : Classes Terminales
1 avis
Occasion dès 40,00 €
-
Finance For Executives
Occasion dès 32,00 €
-
The Collected Works Of Chögyam Trungpa, Volume 9
Neuf dès 58,54 €
-
The Art Of Plein Air Painting
Neuf dès 40,25 €
-
Woman In The Mirror
Occasion dès 44,00 €
-
Land And Blood
Neuf dès 34,12 €
Produits similaires
Présentation Hypergraph Computation de Gao, Yue Format Broché
- Livre Informatique
Résumé :
This open access book discusses the theory and methods of hypergraph computation. Many underlying relationships among data can be represented using graphs, for example in the areas including computer vision, molecular chemistry, molecular biology, etc. In the last decade, methods like graph-based learning and neural network methods have been developed to process such data, they are particularly suitable for handling relational learning tasks. In many real-world problems, however, relationships among the objects of our interest are more complexthan pair-wise. Naively squeezing the complex relationships into pairwise ones will inevitably lead to loss of information which can be expected valuable for learning tasks. Hypergraph, as a generation of graph, has shown superior performance on modelling complex correlations compared with graph. Recent years have witnessed a great popularity of researches on hypergraph-related AI methods, which have been used in computer vision, social media analysis, etc. We summarize these attempts as a new computing paradigm, called hypergraph computation, which is to formulate thehigh-order correlations underneath the data using hypergraph, and then conduct semantic computing on the hypergraph for different applications. The content of this book consists of hypergraph computation paradigms, hypergraph modelling, hypergraph structure evolution, hypergraph neural networks, and applications of hypergraph computation in different fields. We further summarize recent achievements and future directions on hypergraph computation in this book....
Biographie:
Yue Gao is an Associate Professor of School of Software at Tsinghua University. His main research interests focus on Artificial Intelligence, Computer Vision and Brain Science. He has published over 200 papers in the areas of Artificial Intelligence, 3D Vision, Multimedia, and Medical Image Analysis. Prof. Gao has authored the books View-based 3-D Object Retrieval (2014) and Learning-Based Local Visual Representation and Indexing (2015). He has been an associate editor for prestigious journals such as IEEE Transactions on Signal and Information Processing over Networks, Journal of Visual Communication and Image Representation, and IEEE Signal Processing Letters. He is a Senior Member of IEEE. He was listed as the Web of Science Highly Cited Researcher and Elsevier Highly Cited Chinese Researchers. Qionghai Dai is a Professor and the Dean of School of Information at Tsinghua University. He is the member of Chinese Academy of Engineering. His main research interests focus on Artificial Intelligence, Computational Imaging and Brain Science. He has published over 400 papers at Cell, Nature Photonics, Nature Biotechnology, IEEE TPAMI, etc. Prof. Dai has authored the books View-based 3-D Object Retrieval (2014), Learning-Based Local Visual Representation and Indexing (2015), 3D Video Processing and Communication (in Chinese, 2016), Multidimensional Signal Processing: Fast Transform, Sparse Representation and Low-Rank Analysis (in Chinese, 2016), and Computational photography: Computational Capture of Plenoptic Visual Information (in Chinese, 2016). He has been an associate editor for prestigious journals such as IEEE Transactions on Image Processing and IEEE Transactions on Neural Networks and Learning Systems. He is the President of Chinese Association for Artificial Intelligence, a Fellow of CAAI and CAA, and recipient of numerous awards, including the National Natural Science Award of China (three times). He was listed as the Web of Science Highly Cited Researcher....
Sommaire:
This open access book discusses the theory and methods of hypergraph computation. Many underlying relationships among data can be represented using graphs, for example in the areas including computer vision, molecular chemistry, molecular biology, etc. In the last decade, methods like graph-based learning and neural network methods have been developed to process such data, they are particularly suitable for handling relational learning tasks. In many real-world problems, however, relationships among the objects of our interest are more complexthan pair-wise. Naively squeezing the complex relationships into pairwise ones will inevitably lead to loss of information which can be expected valuable for learning tasks. Hypergraph, as a generation of graph, has shown superior performance on modelling complex correlations compared with graph. Recent years have witnessed a great popularity of researches on hypergraph-related AI methods, which have been used in computer vision, social media analysis, etc. We summarize these attempts as a new computing paradigm, called hypergraph computation, which is to formulate thehigh-order correlations underneath the data using hypergraph, and then conduct semantic computing on the hypergraph for different applications. The content of this book consists of hypergraph computation paradigms, hypergraph modelling, hypergraph structure evolution, hypergraph neural networks, and applications of hypergraph computation in different fields. We further summarize recent achievements and future directions on hypergraph computation in this book....
Détails de conformité du produit
Personne responsable dans l'UE