Graph Foundation Model
en-GBde-DEes-ESfr-FR

Graph Foundation Model

13/01/2025 Frontiers Journals

Graph machine learning (or graph model), represented by graph neural networks, employs machine learning (especially deep learning) to graph data and is an important research direction in the artificial intelligence field. With the emergence of the large language model (LLM), many research directions, such as Natural Language Processing (NLP) and Computer Vision (CV), have been significantly impacted. As for how LLM affects the graph model, a research team from Beijing University of Posts and Telecommunications published their new research on 15 December 2024 in Frontiers of Computer Science co-published by Higher Education Press and Springer Nature.
They think LLM is not able to effectively solve graph tasks, while the graph model does not possess the capabilities of LLM, e.g., emergence and homogenization. Inspired by the success of LLMs as foundation models in NLP, they explore the possibilities of graph foundation models (GFM) towards gaining emergence and homogenization capabilities. they analyze the characteristics of GFM and compare it with LLM, also pointing out its challenges and potential applications. It is worth notice that, this publish is defined as a high-level opinion piece, it has not delved into the details of technical implementations and experiments.

Fig 1 The illustration of Graph Foundation Model
In the research, they proposed the concept of Graph Foundation Model (GFM), encapsulating the vision of harmoniously merging the capabilities of graph models and large language models. As illustrated in Fig 1, a graph foundation model is envisioned as a model pre-trained on extensive graph data, primed for adaptation across diverse downstream graph tasks. Once developed, such models would offer increased expressive capabilities, better transferability, and suitability for complex graph tasks and data. They might even demonstrate emergence and homogenization capabilities on graph data, similar to how LLMs perform with natural language data. These benefits, highly desired by researchers in the field of GNNs, have the potential to establish a new leading approach in graph data processing.
DOI: 10.1007/s11704-024-40046-0
Excellent Young Computer Scientists Vision on Foundation Models – Letter, Published: 15 December 2024
Chuan SHI, Junze CHEN, Jiawei LIU, Cheng YANG. Graph foundation model. Front. Comput. Sci., 2024, 18(6): 186355, https://doi.org/10.1007/s11704-024-40046-0
Fichiers joints
  • Fig 1 The illustration of Graph Foundation Model
13/01/2025 Frontiers Journals
Regions: Asia, China
Keywords: Applied science, Computing

Disclaimer: AlphaGalileo is not responsible for the accuracy of news releases posted to AlphaGalileo by contributing institutions or for the use of any information through the AlphaGalileo system.

Témoignages

We have used AlphaGalileo since its foundation but frankly we need it more than ever now to ensure our research news is heard across Europe, Asia and North America. As one of the UK’s leading research universities we want to continue to work with other outstanding researchers in Europe. AlphaGalileo helps us to continue to bring our research story to them and the rest of the world.
Peter Dunn, Director of Press and Media Relations at the University of Warwick
AlphaGalileo has helped us more than double our reach at SciDev.Net. The service has enabled our journalists around the world to reach the mainstream media with articles about the impact of science on people in low- and middle-income countries, leading to big increases in the number of SciDev.Net articles that have been republished.
Ben Deighton, SciDevNet
AlphaGalileo is a great source of global research news. I use it regularly.
Robert Lee Hotz, LA Times

Nous travaillons en étroite collaboration avec...


  • BBC
  • The Times
  • National Geographic
  • The University of Edinburgh
  • University of Cambridge
  • iesResearch
Copyright 2025 by DNN Corp Terms Of Use Privacy Statement