π Application of graph theory in liver research: A review
π Publish year: 2024
πJournal: Portal Hypertension & Cirrhosis
π§βπ»Authors: Xumei Hu, Longyu Sun, Rencheng Zheng, ...
π’Universities: Fudan University, China
π Study paper
β‘οΈChannel: @ComplexNetworkAnalysis
#review #liver #graph
π Publish year: 2024
πJournal: Portal Hypertension & Cirrhosis
π§βπ»Authors: Xumei Hu, Longyu Sun, Rencheng Zheng, ...
π’Universities: Fudan University, China
π Study paper
β‘οΈChannel: @ComplexNetworkAnalysis
#review #liver #graph
Distributed Graph Neural Network Training.pdf
1.9 MB
πDistributed Graph Neural Network Training: A Survey
π Publish year: 2023
π§βπ»Authors: YINGXIA SHAOΨ HONGZHENG LI, HONGBO YIN, XIZHI GUΨ WENTAO ZHANG,...
π’Universities: Beijing University of Posts and Telecommunications, Carnegie Mellon University, The Hong Kong University of Science and Technology (Guangzhou), Peking University.
π Study paper
π²Channel: @ComplexNetworkAnalysis
#paper #Graph #Distributed #Survey
π Publish year: 2023
π§βπ»Authors: YINGXIA SHAOΨ HONGZHENG LI, HONGBO YIN, XIZHI GUΨ WENTAO ZHANG,...
π’Universities: Beijing University of Posts and Telecommunications, Carnegie Mellon University, The Hong Kong University of Science and Technology (Guangzhou), Peking University.
π Study paper
π²Channel: @ComplexNetworkAnalysis
#paper #Graph #Distributed #Survey
π3β€1
πA Survey of Graph Neural Networks for Social Recommender Systems
π Publish year: 2024
π§βπ»Authors: KARTIK SHARMA, YEON-CHANG LEE, SIVAGAMI NAMBI,...
π’Universities: Georgia Institute of Technology, Ulsan National Institute of Science and Technology, Hanyang University.
π Study paper
π²Channel: @ComplexNetworkAnalysis
#paper #Graph #GNN #Survey
π Publish year: 2024
π§βπ»Authors: KARTIK SHARMA, YEON-CHANG LEE, SIVAGAMI NAMBI,...
π’Universities: Georgia Institute of Technology, Ulsan National Institute of Science and Technology, Hanyang University.
π Study paper
π²Channel: @ComplexNetworkAnalysis
#paper #Graph #GNN #Survey
π1
π Machine Learning with Graphs: hyperbolic graph embeddings
π₯Free recorded course by Prof. Jure Leskovec
π₯ This part focused on graph representation learning in Euclidean embedding spaces. In this lecture, we introduce hyperbolic embedding spaces, which are great for modeling hierarchical, tree-like graphs. Moreover, we introduce basics for hyperbolic geometry models, which leads to the idea of hyperbolic GNNs. More details can be found in the paper: Hyperbolic Graph Convolutional Neural Networks
π½ Watch
π²Channel: @ComplexNetworkAnalysis
#video #course #Graph #GNN #Machine_Learning
π₯Free recorded course by Prof. Jure Leskovec
π₯ This part focused on graph representation learning in Euclidean embedding spaces. In this lecture, we introduce hyperbolic embedding spaces, which are great for modeling hierarchical, tree-like graphs. Moreover, we introduce basics for hyperbolic geometry models, which leads to the idea of hyperbolic GNNs. More details can be found in the paper: Hyperbolic Graph Convolutional Neural Networks
π½ Watch
π²Channel: @ComplexNetworkAnalysis
#video #course #Graph #GNN #Machine_Learning
YouTube
Stanford CS224W: Machine Learning with Graphs | 2021 | Lecture 19.2 - Hyperbolic Graph Embeddings
For more information about Stanfordβs Artificial Intelligence professional and graduate programs, visit: https://stanford.io/3Brc7vN
Jure Leskovec
Computer Science, PhD
In previous lectures, we focused on graph representation learning in Euclidean embeddingβ¦
Jure Leskovec
Computer Science, PhD
In previous lectures, we focused on graph representation learning in Euclidean embeddingβ¦
π2
π Intro to Graph Analytics in Python
π₯ Watch
β‘οΈChannel: @ComplexNetworkAnalysis
#video #graph #python
π₯ Watch
β‘οΈChannel: @ComplexNetworkAnalysis
#video #graph #python
YouTube
Intro to Graph Analytics in Python
Graphs are a way to represent a network or a collection of interconnected objects formally. There are many powerful tools out there to explore that kind of network by applying graph algorithms. But sometimes itβs hard to keep track of them!
We have createdβ¦
We have createdβ¦
π₯1π1
π Graph Coloring Problem Explained
π₯ Watch
β‘οΈChannel: @ComplexNetworkAnalysis
#video #graph #coloring
π₯ Watch
β‘οΈChannel: @ComplexNetworkAnalysis
#video #graph #coloring
YouTube
Graph coloring
Chapter 13, section 2 of www.fundamentalalgorithms.com/fas24.
π2
π Machine Learning with Graphs: design space of graph neural networks
π₯Free recorded course by Prof. Jure Leskovec
π₯ This part discussed the important topic of GNN architecture design. Here, we introduce 3 key aspects in GNN design: (1) a general GNN design space, which includes intra-layer design, inter-layer design and learning configurations; (2) a GNN task space with similarity metrics so that we can characterize different GNN tasks and, therefore, transfer the best GNN models across tasks; (3) an effective GNN evaluation technique so that we can convincingly evaluate any GNN design question, such as βIs BatchNorm generally useful for GNNs?β. Overall, we provide the first systematic investigation of general guidelines for GNN design, understandings of GNN tasks, and how to transfer the best GNN designs across tasks. We release GraphGym as an easy-to-use code platform for GNN architectural design. More information can be found in the paper: Design Space for Graph Neural Networks
π½ Watch
π²Channel: @ComplexNetworkAnalysis
#video #course #Graph #GNN #Machine_Learning
π₯Free recorded course by Prof. Jure Leskovec
π₯ This part discussed the important topic of GNN architecture design. Here, we introduce 3 key aspects in GNN design: (1) a general GNN design space, which includes intra-layer design, inter-layer design and learning configurations; (2) a GNN task space with similarity metrics so that we can characterize different GNN tasks and, therefore, transfer the best GNN models across tasks; (3) an effective GNN evaluation technique so that we can convincingly evaluate any GNN design question, such as βIs BatchNorm generally useful for GNNs?β. Overall, we provide the first systematic investigation of general guidelines for GNN design, understandings of GNN tasks, and how to transfer the best GNN designs across tasks. We release GraphGym as an easy-to-use code platform for GNN architectural design. More information can be found in the paper: Design Space for Graph Neural Networks
π½ Watch
π²Channel: @ComplexNetworkAnalysis
#video #course #Graph #GNN #Machine_Learning
arXiv.org
Design Space for Graph Neural Networks
The rapid evolution of Graph Neural Networks (GNNs) has led to a growing number of new architectures as well as novel applications. However, current research focuses on proposing and evaluating...
π Graph Data Management and Graph Machine Learning: Synergies and Opportunities
π Publish year: 2025
π§βπ»Authors: Arijit Kha, Xiangyu Ke, Yinghui Wu
π’University:
- Aalborg University, Denmark
- Zhejiang University, China
- Case Western Reserve University, USA
π Study the paper
β‘οΈChannel: @ComplexNetworkAnalysis
#review #graph #machine_learning #data_management
π Publish year: 2025
π§βπ»Authors: Arijit Kha, Xiangyu Ke, Yinghui Wu
π’University:
- Aalborg University, Denmark
- Zhejiang University, China
- Case Western Reserve University, USA
π Study the paper
β‘οΈChannel: @ComplexNetworkAnalysis
#review #graph #machine_learning #data_management
π1
π A curated list of awesome network analysis resources
π₯ GitBook website
π Study
β‘οΈChannel: @ComplexNetworkAnalysis
#github #graph #visualization #book
π₯ GitBook website
π Study
β‘οΈChannel: @ComplexNetworkAnalysis
#github #graph #visualization #book
π Methods of decomposition theory and graph labeling in the study of social network structure
π Publish year: 2024
π§βπ»Authors: L Hulianytskyi, M Semeniuta, S Yakymenko
π’Universities: Prospekt Universytetskyi,Ukraine
π Study the paper
β‘οΈChannel: @ComplexNetworkAnalysis
#review #graph_labling #decomposition
π Publish year: 2024
π§βπ»Authors: L Hulianytskyi, M Semeniuta, S Yakymenko
π’Universities: Prospekt Universytetskyi,Ukraine
π Study the paper
β‘οΈChannel: @ComplexNetworkAnalysis
#review #graph_labling #decomposition
β€1π1
π Machine Learning with Graphs: GraphSAGE Neighbor Sampling
π₯Free recorded course by Prof. Jure Leskovec
π₯ This part discussed Neighbor Sampling, That is a representative method used to scale up GNNs to large graphs. The key insight is that a K-layer GNN generates a node embedding by using only the nodes from the K-hop neighborhood around that node. Therefore, to generate embeddings of nodes in the mini-batch, only the K-hop neighborhood nodes and their features are needed to load onto a GPU, a tractable operation even if the original graph is large. To further reduce the computational cost, only a subset of neighboring nodes is sampled for GNNs to aggregate.
π½ Watch
π²Channel: @ComplexNetworkAnalysis
#video #course #Graph #GNN #Machine_Learning #GraphSAGE
π₯Free recorded course by Prof. Jure Leskovec
π₯ This part discussed Neighbor Sampling, That is a representative method used to scale up GNNs to large graphs. The key insight is that a K-layer GNN generates a node embedding by using only the nodes from the K-hop neighborhood around that node. Therefore, to generate embeddings of nodes in the mini-batch, only the K-hop neighborhood nodes and their features are needed to load onto a GPU, a tractable operation even if the original graph is large. To further reduce the computational cost, only a subset of neighboring nodes is sampled for GNNs to aggregate.
π½ Watch
π²Channel: @ComplexNetworkAnalysis
#video #course #Graph #GNN #Machine_Learning #GraphSAGE
YouTube
Stanford CS224W: Machine Learning with Graphs | 2021 | Lecture 17.2 - GraphSAGE Neighbor Sampling
For more information about Stanfordβs Artificial Intelligence professional and graduate programs, visit: https://stanford.io/3Brn5kW
Lecture 17.2 - GraphSAGE Neighbor Sampling Scaling up GNNs
Jure Leskovec
Computer Science, PhD
Neighbor Sampling is a representativeβ¦
Lecture 17.2 - GraphSAGE Neighbor Sampling Scaling up GNNs
Jure Leskovec
Computer Science, PhD
Neighbor Sampling is a representativeβ¦
π Introduction to Random Graphs
π₯ Free online book by Carnegie Mellon University, 2025
π Study
β‘οΈChannel: @ComplexNetworkAnalysis
#book #graph #random
π₯ Free online book by Carnegie Mellon University, 2025
π Study
β‘οΈChannel: @ComplexNetworkAnalysis
#book #graph #random
πA Survey of Imbalanced Learning on Graphs: Problems, Techniques, and Future Directions
π Journal:IEEE Transactions on Knowledge and Data Engineering (I.F.=8.9)
π Publish year: 2025
π§βπ»Authors: Zemin Liu; Yuan Li; Nan Chen, ...
π’Universities: National University of Singapore
π Study the paper
π¦ Github
π₯ Early access
β‘οΈChannel: @ComplexNetworkAnalysis
#review #imbalanced #learning #graph
π Journal:IEEE Transactions on Knowledge and Data Engineering (I.F.=8.9)
π Publish year: 2025
π§βπ»Authors: Zemin Liu; Yuan Li; Nan Chen, ...
π’Universities: National University of Singapore
π Study the paper
π¦ Github
π₯ Early access
β‘οΈChannel: @ComplexNetworkAnalysis
#review #imbalanced #learning #graph
π A Simple Introduction to Graph Theory
π₯Booklet
πPublish year: 2024
π§βπ»Author: Brian Heinold
π’University: Mount Saint Mary's University, USA
π Study
β‘οΈChannel: @ComplexNetworkAnalysis
#book #booklet #graph
π₯Booklet
πPublish year: 2024
π§βπ»Author: Brian Heinold
π’University: Mount Saint Mary's University, USA
π Study
β‘οΈChannel: @ComplexNetworkAnalysis
#book #booklet #graph
π1
π Demystifying the Power of Large Language Models in Graph Structure Generation
π Publish year: 2025
π§βπ»Author: Yu Wang, Ryan Rossi, Namyong Park, ...
π’University: University of Oregon, Adobe Research, Cisco AI Research, University of Michigan, USA
π Study the paper
β‘οΈChannel: @ComplexNetworkAnalysis
#chatgpt #llm #graph_generation
π Publish year: 2025
π§βπ»Author: Yu Wang, Ryan Rossi, Namyong Park, ...
π’University: University of Oregon, Adobe Research, Cisco AI Research, University of Michigan, USA
π Study the paper
β‘οΈChannel: @ComplexNetworkAnalysis
#chatgpt #llm #graph_generation
π1
π Graph Foundation Models: A Comprehensive Survey
π Publish year: 2025
π§βπ»Authors: Zehong Wang, Zheyuan Liu, Tianyi Ma, ...
π’Universities: University of Notre Dame, University of Connecticut, University of Virginia,
University of Illinois Urbana-Champaign, USA - University of Cambridge, England
π Study the paper
π¦ GitHub Resources
β‘οΈChannel: @ComplexNetworkAnalysis
#review #Graph_Foundation_Models #llm
π Publish year: 2025
π§βπ»Authors: Zehong Wang, Zheyuan Liu, Tianyi Ma, ...
π’Universities: University of Notre Dame, University of Connecticut, University of Virginia,
University of Illinois Urbana-Champaign, USA - University of Cambridge, England
π Study the paper
π¦ GitHub Resources
β‘οΈChannel: @ComplexNetworkAnalysis
#review #Graph_Foundation_Models #llm
πGraph Learning for Fake Review Detection
π Publish year: 2022
πJournal: Frontiers in Artificial Intelligence(I.F=3)
π§βπ»Authors: Shuo Yu, Jing Ren, Shihao Li, Mehdi Naseriparsa, Feng Xia
π’Universities: Dalian University of Technology, China.
Federation University Australia, Australia.
π Study paper
π±Channel: @ComplexNetworkAnalysis
#paper #Graph #Fake #Detection #review
π Publish year: 2022
πJournal: Frontiers in Artificial Intelligence(I.F=3)
π§βπ»Authors: Shuo Yu, Jing Ren, Shihao Li, Mehdi Naseriparsa, Feng Xia
π’Universities: Dalian University of Technology, China.
Federation University Australia, Australia.
π Study paper
π±Channel: @ComplexNetworkAnalysis
#paper #Graph #Fake #Detection #review
β€1π1
Forwarded from Bioinformatics
π Graph Neural Networks in Modern AI-aided Drug Discovery
πPublish year: 2025
π§βπ»Authors: Odin Zhang, Haitao Lin, Xujun Zhang, ...
π’Universities: Zhejiang University, Hangzhou & Westlake University, China - Harvard University, USA
π Study the paper
π²Channel: @Bioinformatics
#review #drug #ai #gnn #graph_neural_network
πPublish year: 2025
π§βπ»Authors: Odin Zhang, Haitao Lin, Xujun Zhang, ...
π’Universities: Zhejiang University, Hangzhou & Westlake University, China - Harvard University, USA
π Study the paper
π²Channel: @Bioinformatics
#review #drug #ai #gnn #graph_neural_network
π₯ Graph Classification: Step-by-step in action
π Watch
β‘οΈChannel: @ComplexNetworkAnalysis
#video #classification #graph
π Watch
β‘οΈChannel: @ComplexNetworkAnalysis
#video #classification #graph
YouTube
04 - Graph Classification | step-by-step
0:00 Data preparation
8:50 GNN with GCN
22:00 GNN with SageConv
In this video, weβll be exploring the implementation of graph classification models using SAGEConv and GCN.
We'll be working with the GIN dataset, which includes 1113 graphs spread across 2β¦
8:50 GNN with GCN
22:00 GNN with SageConv
In this video, weβll be exploring the implementation of graph classification models using SAGEConv and GCN.
We'll be working with the GIN dataset, which includes 1113 graphs spread across 2β¦
π Graph Learning
π₯Booklet
πPublish year: 2025
π§βπ»Authors: Feng Xia, Ciyuan Peng, Jing Ren, ...
π’Universities: Federation University Australia & RMIT Universit, Australia - Jilin University & Dalian University of Technology, China
π Study
β‘οΈChannel: @ComplexNetworkAnalysis
#book #booklet #graph #learning
π₯Booklet
πPublish year: 2025
π§βπ»Authors: Feng Xia, Ciyuan Peng, Jing Ren, ...
π’Universities: Federation University Australia & RMIT Universit, Australia - Jilin University & Dalian University of Technology, China
π Study
β‘οΈChannel: @ComplexNetworkAnalysis
#book #booklet #graph #learning
π2