Graph representation learning
Material type: TextPublication details: New York : Springer, ©2022Description: xvii, 141 p. : ill. ; 23 cmISBN:- 9783031004605
- 006.3 HAM-G
Item type | Current library | Collection | Call number | Status | Notes | Date due | Barcode | Item holds |
---|---|---|---|---|---|---|---|---|
Books | IIITD Reference | Computer Science and Engineering | CB 006.3 HAM-G (Browse shelf(Opens below)) | Available | DBT Project Grant | 012928 |
Browsing IIITD shelves, Shelving location: Reference, Collection: Computer Science and Engineering Close shelf browser (Hides shelf browser)
CB 006.1 GIR-D Dynamical variational autoencoders : a comprehensive review | CB 006.3 DOR-N The nature of complex networks | CB 006.3 GOL-N Neural network methods in natural language processing | CB 006.3 HAM-G Graph representation learning | CB 006.3 KAM-T Transformers for machine learning : a deep dive | CB 006.3 KIS-A The age of AI : | CB 006.3 MIT-A Artificial intelligence : |
Included bibilographical refferences.
1. Introduction 2. Background and traditional approaches part I. Node embeddings. 3. Neighborhood reconstruction methods
4. Multi-relational data and knowledge graphs part II. Graph neural networks. 5. The graph neural network model
6. Graph neural networks in practice part III. Generative graph models.
8. Traditional graph generation approaches
9. Deep generative models
There are no comments on this title.