LEADER 06361nam 22006855 450 001 9911018642003321 005 20250726130248.0 010 $a9783031885389$b(electronic bk.) 010 $z9783031885372 024 7 $a10.1007/978-3-031-88538-9 035 $a(MiAaPQ)EBC32246648 035 $a(Au-PeEL)EBL32246648 035 $a(CKB)39723007300041 035 $a(DE-He213)978-3-031-88538-9 035 $a(EXLCZ)9939723007300041 100 $a20250726d2025 u| 0 101 0 $aeng 135 $aurcnu|||||||| 181 $ctxt$2rdacontent 182 $cc$2rdamedia 183 $acr$2rdacarrier 200 10$aGraph Neural Networks: Essentials and Use Cases /$fedited by Pethuru Raj Chelliah, Pawan Whig, Susila Nagarajan, Usha Sakthivel, Nikhitha Yathiraju 205 $a1st ed. 2025. 210 1$aCham :$cSpringer Nature Switzerland :$cImprint: Springer,$d2025. 215 $a1 online resource (441 pages) 311 08$aPrint version: Chelliah, Pethuru Raj Graph Neural Networks: Essentials and Use Cases Cham : Springer,c2025 9783031885372 327 $aChapter 1 Applications of Graph Neural Networks in Computer Vision: Transforming Perception Through Structure -- Chapter 2 Large-Scale Learnable Graph Convolutional Networks (LGCNs) Graph Neural Networks (GNNs): Articulating the Advancements and Advantages, Graph Neural Networks (GNNs): the Essentials and the Use Cases -- Chapter 3 Deep Finance: Harnessing Graph-Based Neural Networks for Market Predictions -- Chapter 4 Illustrating the significance of graphical neural networks to prevent social engineering -- Chapter 5 The Challenges of Graph Neural Networks -- Chapter 6 Utilizing Graph Neural Networks (GNN) in Quantum-Natural Language Processing (Q-NLP) for Risk Management in Banking Sector: A Novel Approach -- Chapter 7 Graph Neural Networks (GNNs) Applications -- Chapter 8 Revolutionizing AI: Applications of Graph Neural Networks Across Industries -- Chapter 9 Graph Neural Networks for Enhanced Computer Vision -- Chapter 10 Enhancing Natural Language Processing with Graph Neural Networks: Improving Understanding, Performance, and Transparency -- Chapter 11 Microarray Data Feature Selection and Classification Using Graph Neural Networks -- Chapter 12 Graph Neural Network -- Chapter 13 Graph Neural Networks for Scene Understanding: A Review and Future Directions -- Chapter 14 Graph Neural Networks: Architecting Intelligence Across Domains - From Molecular Design to Urban Systems -- Chapter 15 Unlocking Insights: A Guide to the Benefits of Graph-represented Data In Gnns -- Chapter 16 Graph Neural Networks Applications - A Dwell into Biomedical Applications and Traffic Flow Analysis -- Index. 330 $aThis book explains the technologies and tools that underpin GNNs, offering a clear and practical guide to their industrial applications and use cases. AI engineers, data scientists, and researchers in AI and graph theory will find detailed insights into the latest trends and innovations driving this dynamic field. With practical chapters demonstrating how GNNs are reshaping various industry verticals?and how they complement advances in generative, agentic, and physical AI?this book is an essential resource for understanding and leveraging their potential. The neural network paradigm has surged in popularity for its ability to uncover hidden patterns within vast datasets. This transformative technology has spurred global innovations, particularly through the evolution of deep neural networks (DNNs). Convolutional neural networks (CNNs) have revolutionized computer vision, while recurrent neural networks (RNNs) and their advanced variants have automated natural language processing tasks such as speech recognition, translation, and content generation. Traditional DNNs primarily handle Euclidean data, yet many real-world problems involve non-Euclidean data?complex relationships and interactions naturally represented as graphs. This challenge has driven the rise of graph neural networks (GNNs), an approach that extends deep learning into new domains. GNNs are powerful models designed to work with graph-structured data, where nodes represent individual data points and edges denote the relationships between them. Several variants have emerged: Graph Convolutional Networks (GCNs): These networks learn from a node?s local neighborhood by aggregating information from adjacent nodes, updating the node?s representation in the process. Graph Attentional Networks (GATs): By incorporating attention mechanisms, GATs focus on the most relevant neighbors during aggregation, enhancing model performance. Graph Recurrent Networks (GRNs): These networks combine principles from RNNs with graph structures to capture dynamic relationships within the data. GNNs are applied in a variety of advanced use cases, including node classification, link prediction, graph clustering, anomaly detection, recommendation systems, and also in natural language processing and computer vision. They help forecast traffic patterns, analyze molecular structures, verify programs, predict social influence, model electronic health records, and map brain networks. 606 $aArtificial intelligence 606 $aMachine learning 606 $aComputer vision 606 $aNatural language processing (Computer science) 606 $aGraph theory 606 $aArtificial Intelligence 606 $aMachine Learning 606 $aComputer Vision 606 $aNatural Language Processing (NLP) 606 $aGraph Theory 615 0$aArtificial intelligence. 615 0$aMachine learning. 615 0$aComputer vision. 615 0$aNatural language processing (Computer science) 615 0$aGraph theory. 615 14$aArtificial Intelligence. 615 24$aMachine Learning. 615 24$aComputer Vision. 615 24$aNatural Language Processing (NLP). 615 24$aGraph Theory. 676 $a006.3 700 $aRaj$b Pethuru$0786064 701 $aWhig$b Pawan$01448637 701 $aNagarajan$b Susila$01822992 701 $aSakthivel$b Usha$01822991 701 $aYathiraju$b Nikhitha$01836436 801 0$bMiAaPQ 801 1$bMiAaPQ 801 2$bMiAaPQ 912 $a9911018642003321 996 $aGraph Neural Networks: Essentials and Use Cases$94529904 997 $aUNINA