BOOKS - Graph Neural Networks in Action (MEAP v8)
Graph Neural Networks in Action (MEAP v8) - Keita Broadwater 2023 EPUB Manning Publications BOOKS
ECO~18 kg CO²

1 TON

Views
56900

Telegram
 
Graph Neural Networks in Action (MEAP v8)
Author: Keita Broadwater
Year: 2023
Pages: 404
Format: EPUB
File size: 32.6 MB
Language: ENG



Pay with Telegram STARS
The book covers the basics of GNNs, including their architecture, applications, and training methods. It also delves into advanced topics such as attention mechanisms, graph pooling, and hierarchical graph neural networks. The book begins by introducing the concept of graphs and their importance in machine learning, followed by an overview of GNNs and their applications. The authors then dive into the technical aspects of GNNs, explaining how they work and how to implement them using PyTorch. They cover various techniques for training GNNs, including batch normalization, dropout, and optimization methods. The book also discusses some of the challenges associated with GNNs, such as over-smoothing and under-smoothing, and how to address these issues. The second part of the book focuses on more advanced topics, such as attention mechanisms, graph pooling, and hierarchical graph neural networks. The authors explain how these techniques can be used to improve the performance of GNNs in complex tasks such as node classification, graph classification, and link prediction. They also provide examples of real-world applications of GNNs, such as social network analysis and recommendation systems. Finally, the book concludes with a discussion on the future of GNNs and their potential impact on society. The authors emphasize the need for further research in this field to overcome the limitations of current GNN models and to explore new applications. Throughout the book, the authors use a combination of theoretical explanations and practical exercises to help readers understand the concepts and implement GNNs in their own projects.
''

You may also be interested in:

Quarkus in Action (MEAP v8)
Transformers in Action (MEAP v7)
Quarkus in Action (MEAP v3)
Go in Action, Second Edition (MEAP v3)
Quarkus in Action (MEAP v8)
Pandas in Action (MEAP v7)
Gradient Expectations Structure, Origins, and Synthesis of Predictive Neural Networks
Emerging Capabilities and Applications of Artificial Higher Order Neural Networks
Introduction to Deep Learning and Neural Networks with Python™ A Practical Guide
Artificial Neural Networks in Food Processing: Modeling and Predictive Control
Neural Networks with Model Compression (Computational Intelligence Methods and Applications)
Hacker|s Guide to Neural Networks in javascript
Gradient Expectations Structure, Origins, and Synthesis of Predictive Neural Networks
Toward Artificial General Intelligence Deep Learning, Neural Networks, Generative AI
Reactive Distillation: Advanced Control using Neural Networks (De Gruyter Textbook)
Gas Turbines Modeling, Simulation, and Control Using Artificial Neural Networks
Toward Artificial General Intelligence Deep Learning, Neural Networks, Generative AI
Toward Artificial General Intelligence: Deep Learning, Neural Networks, Generative AI
Applied Graph Theory An Introduction with Graph Optimization and Algebraic Graph Theory
Applied Graph Theory An Introduction with Graph Optimization and Algebraic Graph Theory
Elixir in Action, Third Edition (MEAP v7)
Microservices Security in Action (MEAP)
OpenID Connect in Action (MEAP)
D3.js in Action, Third Edition MEAP V13
R in Action, 3rd Edition (MEAP)
GitHub Actions in Action (MEAP v2)
Istio in Action (MEAP Version 9)
Flutter in Action MEAP Edition
Artificial Neural Networks for Engineers and Scientists Solving Ordinary Differential Equations
AI Applications to Communications and Information Technologies The Role of Ultra Deep Neural Networks
Fundamentals of Computational Intelligence Neural Networks, Fuzzy Systems, and Evolutionary Computation
Artificial Neural Network Training and Software Implementation Techniques (Computer Networks)
Deep Neural Networks-Enabled Intelligent Fault Diagnosis of Mechanical Systems
Deep Neural Networks-Enabled Intelligent Fault Diagnosis of Mechanical Systems
Statistical Learning Using Neural Networks A Guide for Statisticians and Data Scientists with Python
Neural Networks with Tensorflow and Keras Training, Generative Models, and Reinforcement Learning
AI Applications to Communications and Information Technologies The Role of Ultra Deep Neural Networks
Computational Intelligence Synergies of Fuzzy Logic, Neural Networks and Evolutionary Computing
Neural Networks for Beginners Comprehensive Guide to Understanding the Power of Artificial Intelligence
Neural Networks for Natural Language Processing (Advances in Computer and Electrical Engineering)