Graph Neural Networks: Advances in Representation Learning for Structured Data Analysis
Main Article Content
Abstract
Graph Neural Networks (GNNs) have emerged as a powerful framework for representation learning in structured data analysis. recent advances in GNNs, highlighting their capabilities, applications, and challenges. GNNs extend traditional neural network architectures to handle graph-structured data, enabling the modeling of complex relationships and dependencies present in various domains such as social networks, biological networks, and recommendation systems. By recursively aggregating information from neighbouring nodes, GNNs can learn expressive node and graph embeddings that capture both local and global structural properties. the key components of GNNs, including message passing schemes, graph convolutional layers, and graph attention mechanisms. Additionally, it discusses applications of GNNs in node classification, link prediction, graph classification, and graph generation tasks. Despite their effectiveness, GNNs also face challenges such as scalability, generalization to unseen graphs, and interpretability. Addressing these challenges requires further research and development to unlock the full potential of GNNs in structured data analysis.
Article Details
This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.
You are permitted to share and adapt the material under the terms of Creative Commons Attribution-NonCommercial 4.0 International (CC BY-NC 4.0). This means you can distribute and modify the work, provided appropriate credit is given, a link to the license is provided, and it's made clear if any changes were made. However, commercial use of the material is not allowed, meaning you may not use it for commercial purposes without prior permission from the copyright holder.
References
Amita, & Abhishek Bhatnagar. (2016). Application Of Speech With Their Analysis About Recognition. International Journal for Research Publication and Seminar, 7(6), 24–35. Retrieved from https://jrps.shodhsagar.com/index.php/j/article/view/900
Atomode, D (2024). ENERGY EFFICIENCY IN MECHANICAL SYSTEMS: A MACHINE LEARNING APPROACH, Journal of Emerging Technologies and Innovative Research (JETIR), 11 (5), 441-448.
Bronstein, M. M., Bruna, J., LeCun, Y., Szlam, A., & Vandergheynst, P. (2017). Geometric deep learning: going beyond Euclidean data. IEEE Signal Processing Magazine, 34(4), 18-42.
Cui, Y., Zhang, M., Pei, J., Yu, Y., & Yang, S. (2019). A comprehensive survey on graph neural networks. IEEE Transactions on Neural Networks and Learning Systems, 32(1), 4-24.
Dr. Umed Singh. (2022). A Study of Retailers’ Awareness of Goods and Services Tax (GST). International Journal for Research Publication and Seminar, 13(5), 106–111. Retrieved from https://jrps.shodhsagar.com/index.php/j/article/view/252
Hamilton, W. L., Ying, R., & Leskovec, J. (2017). Inductive representation learning on large graphs. In Advances in neural information processing systems (pp. 1024-1034).
Hamilton, W. L., Ying, R., & Leskovec, J. (2017). Representation learning on graphs: Methods and applications. arXiv preprint arXiv:1709.05584.
Kaur, H., & Gurjar, S. K. (2023). A Pre-Experimental Study to Assess the Effectiveness of Abdominal Effleurage on Labor Pain Intensity Among Primipara Mothers During 1st Stage of Labor in Selected Hospitals of Distt. Mohali, Punjab (Part 2). Universal Research Reports, 10(4), 54–68. Retrieved from https://urr.shodhsagar.com/index.php/j/article/view/1137
Katragadda, V. . (2024). Leveraging Intent Detection and Generative AI for Enhanced Customer Support. Journal of Artificial Intelligence General Science (JAIGS) ISSN:3006-4023, 5(1), 109–114. https://doi.org/10.60087/jaigs.v5i1.178
Kipf, T. N., & Welling, M. (2017). Semi-supervised classification with graph convolutional networks. In International Conference on Learning Representations.
Kumar, D., & Pooja. (2018). PROBLEMS AND CHALLENGES FACED BY SCHEDULED CASTE PEOPLE IN HARYANA -A CASE STUDY. Innovative Research Thoughts, 4(5), 269–276. Retrieved from https://irt.shodhsagar.com/index.php/j/article/view/915
Kumar, R. (2015). The Intersection of Virtual Reality and Engineering Design. Darpan International Research Analysis, 3(1), 8–12. Retrieved from https://dira.shodhsagar.com/index.php/j/article/view/9
Kumar, S. K., Kabia, S. K., & Nibhoria, S. (2017). STATUS OF IMPLEMENTATION AND AWARENESS OF HACCP IN FOOD OUTLETS OF FIVE STAR HOTELS IN REFERENCE TO DELHI-NCR. Universal Research Reports, 4(13), 399–406. Retrieved from https://urr.shodhsagar.com/index.php/j/article/view/462
Mrs. Harpreet Kaur. (2023). “A PRE-EXPERIMENTAL STUDY TO ASSESS THE EFFECTIVENESS OF ABDOMINAL EFFLEURAGE ON LABOR PAIN INTENSITY AMONG PRIMIPARA MOTHERS DURING 1ST STAGE OF LABOR IN SELECTED HOSPITALS OF DISTT. MOHALI, PUNJAB.”. International Journal for Research Publication and Seminar, 14(5), 60–74. Retrieved from https://jrps.shodhsagar.com/index.php/j/article/view/452
Ms. Yogita, & Ms Jyoti. (2024). Understanding Big Data Analytics. Innovative Research Thoughts, 9(1), 306–312. Retrieved from https://irt.shodhsagar.com/index.php/j/article/view/613
Patel, A. D. N. B. C. (2023). RARES: Runtime Attack Resilient Embedded System Design Using Verified Proof-of-Execution (Version 1). arXiv. https://doi.org/10.48550/ARXIV.2305.03266
Rajnish Sharma. (2024). A Study of Retailers’ Awareness of Goods and Services Tax (GST). Innovative Research Thoughts, 8(4), 90–94. Retrieved from https://irt.shodhsagar.com/index.php/j/article/view/1175
Satyanarayan Kanungo (2023). BRIDGING THE GAP IN AI SECURITY: A COMPREHENSIVE REVIEW AND FUTURE DIRECTIONS FOR CHATBOT TECHNOLOGIES. International Research Journal of Modernization in Engineering Technology and Science, 5(12), 4068-4079. DOI: https://www.doi.org/10.56726/IRJMETS47925
Vamsi Katragadda "Ethical AI in Customer Interactions: Implementing Safeguards and Governance Frameworks" Iconic Research And Engineering Journals Volume 7 Issue 12 2024 Page 394-397
Velickovic, P., Cucurull, G., Casanova, A., Romero, A., Lio, P., & Bengio, Y. (2018). Graph attention networks. In International Conference on Learning Representations.
Wu, Z., Pan, S., Chen, F., Long, G., Zhang, C., & Yu, P. S. (2021). A comprehensive survey on graph neural networks. IEEE Transactions on Neural Networks and Learning Systems, 32(1), 4-24.
Wu, Z., Ramsundar, B., Feinberg, E. N., Gomes, J., Geniesse, C., Pappu, A. S., ... & Pande, V. (2018). MoleculeNet: a benchmark for molecular machine learning. Chemical science, 9(2), 513-530.
Zhang, M., & Chen, Y. (2018). Link prediction based on graph neural networks. In Advances in neural information processing systems (pp. 5165-5175).
Zhou, J., Cui, G., Zhang, Z., Yang, C., Liu, Z., Wang, L., & Li, C. (2018). Graph neural networks: A review of methods and applications. arXiv preprint arXiv:1812.08434.