π Graph-Theoretical Analysis of Biological Networks: A Survey
π Journal: Computation (I.F=2.2)
π Publish year: 2023
π§βπ»Author: Kayhan Erciyes
π’University: Marmara University
π Study the paper
π±Channel: @ComplexNetworkAnalysis
#paper #Graph #Biological #Survey
π Journal: Computation (I.F=2.2)
π Publish year: 2023
π§βπ»Author: Kayhan Erciyes
π’University: Marmara University
π Study the paper
π±Channel: @ComplexNetworkAnalysis
#paper #Graph #Biological #Survey
π5
π Understanding Graph Embedding Methods and Their Applications
π Journal: Society for Industrial and Applied Mathematic (I.F=1.698)
π Publish year: 2021
π§βπ»Authors: Mengjia Xu
π’Universities: Massachusetts Institute of Technology
π Study the paper
π²Channel: @ComplexNetworkAnalysis
#paper #Applications #graph_Embedding
π Journal: Society for Industrial and Applied Mathematic (I.F=1.698)
π Publish year: 2021
π§βπ»Authors: Mengjia Xu
π’Universities: Massachusetts Institute of Technology
π Study the paper
π²Channel: @ComplexNetworkAnalysis
#paper #Applications #graph_Embedding
π2
π Network analytics: an introduction and illustrative applications in health data science
π Journal: Journal of Information Technology Case and Application Research
π Publish year: 2023
π§βπ»Authors: Pankush Kalgotra, Ramesh Sharda
π’Universities: Auburn University, Oklahoma State University
π Study the paper
π±Channel: @ComplexNetworkAnalysis
#paper #applications #health #data_science
π Journal: Journal of Information Technology Case and Application Research
π Publish year: 2023
π§βπ»Authors: Pankush Kalgotra, Ramesh Sharda
π’Universities: Auburn University, Oklahoma State University
π Study the paper
π±Channel: @ComplexNetworkAnalysis
#paper #applications #health #data_science
π2β€1
π A survey on bipartite graphs embedding
π Journal: Social Network Analysis and Mining (I.F=2.8)
π Publish year: 2023
π§βπ»Authors: Edward Giamphy, JeanβLoup Guillaume, Antoine Doucet, Kevin Sanchis
π’Universities: La Rochelle University
π Study the paper
π²Channel: @ComplexNetworkAnalysis
#paper #bipartite #graph_Embedding #survey
π Journal: Social Network Analysis and Mining (I.F=2.8)
π Publish year: 2023
π§βπ»Authors: Edward Giamphy, JeanβLoup Guillaume, Antoine Doucet, Kevin Sanchis
π’Universities: La Rochelle University
π Study the paper
π²Channel: @ComplexNetworkAnalysis
#paper #bipartite #graph_Embedding #survey
π4
π A Literature Review of Recent Graph Embedding Techniques for Biomedical Data
πConference: International Conference on Neural Information Processing
π Publish year: 2021
π§βπ»Authors: Yankai Chen, Yaozu Wu, Shicheng Ma, Irwin King
π’University: The Chinese University of Hong Kong
π Study the paper
π±Channel: @ComplexNetworkAnalysis
#paper #Graph_Embedding #Biomedical #review
πConference: International Conference on Neural Information Processing
π Publish year: 2021
π§βπ»Authors: Yankai Chen, Yaozu Wu, Shicheng Ma, Irwin King
π’University: The Chinese University of Hong Kong
π Study the paper
π±Channel: @ComplexNetworkAnalysis
#paper #Graph_Embedding #Biomedical #review
π5
π A Systematic Review of Deep Graph Neural Networks: Challenges, Classification, Architectures, Applications & Potential Utility in Bioinformatics
π Journal: Social Network Analysis and Mining (I.F=2.8)
π Publish year: 2023
π§βπ»Authors: Mudasir Malla, Adil ; Banka, Asif Ali
π’Universities: Islamic University of Science & Technology
π Study the paper
π²Channel: @ComplexNetworkAnalysis
#paper #Bioinformatics #Deep_GNN #Review
π Journal: Social Network Analysis and Mining (I.F=2.8)
π Publish year: 2023
π§βπ»Authors: Mudasir Malla, Adil ; Banka, Asif Ali
π’Universities: Islamic University of Science & Technology
π Study the paper
π²Channel: @ComplexNetworkAnalysis
#paper #Bioinformatics #Deep_GNN #Review
π3π1
π Graph neural networks for clinical risk prediction based on electronic health records: A survey
π Journal: Journal of Biomedical Informatics (I.F=4.5)
π Publish year: 2024
π§βπ»Authors: HeloΓsa Oss Boll, Ali Amirahmadi, Mirfarid Musavian Ghazani, Wagner Ourique de Morais, Edison Pignaton de Freitas, Amira Soliman, Farzaneh Etminani, Stefan Byttner, Mariana Recamonde-Mendoza
π’Universities: Universidade Federal do Rio Grande do Sul, Halmstad University
π Study the paper
π±Channel: @ComplexNetworkAnalysis
#paper #GNN #risk #prediction #electronic #health #survey
π Journal: Journal of Biomedical Informatics (I.F=4.5)
π Publish year: 2024
π§βπ»Authors: HeloΓsa Oss Boll, Ali Amirahmadi, Mirfarid Musavian Ghazani, Wagner Ourique de Morais, Edison Pignaton de Freitas, Amira Soliman, Farzaneh Etminani, Stefan Byttner, Mariana Recamonde-Mendoza
π’Universities: Universidade Federal do Rio Grande do Sul, Halmstad University
π Study the paper
π±Channel: @ComplexNetworkAnalysis
#paper #GNN #risk #prediction #electronic #health #survey
π3
π Machine Learning with Graphs: Applications of Deep Graph Generation.
π₯Free recorded course by Jure Leskovec, Computer Science, PhD
π½ Watch
π²Channel: @ComplexNetworkAnalysis
#video #course #Graph #Machine_Learning #DGNN #GNN
π₯Free recorded course by Jure Leskovec, Computer Science, PhD
π½ Watch
π²Channel: @ComplexNetworkAnalysis
#video #course #Graph #Machine_Learning #DGNN #GNN
YouTube
Stanford CS224W: ML with Graphs | 2021 | Lecture 15.4 - Applications of Deep Graph Generation
For more information about Stanfordβs Artificial Intelligence professional and graduate programs, visit: https://stanford.io/3EwmakW
Lecture 15.4: Application of Deep Graph Generative Models to Molecule Generation
Jure Leskovec
Computer Science, PhD
Finallyβ¦
Lecture 15.4: Application of Deep Graph Generative Models to Molecule Generation
Jure Leskovec
Computer Science, PhD
Finallyβ¦
π1
π A Bibliometric Analysis of Recent Developments and Trends in Knowledge Graph Research (2013β2022)
π Journal: IEEE ACCESS (I.F=3.9)
π Publish year: 2024
π§βπ»Authors: GANG WANG, JING HE
π’Universities: Chaohu University
π Study the paper
π²Channel: @ComplexNetworkAnalysis
#paper #Bibliometric #Knowledge_Graph
π Journal: IEEE ACCESS (I.F=3.9)
π Publish year: 2024
π§βπ»Authors: GANG WANG, JING HE
π’Universities: Chaohu University
π Study the paper
π²Channel: @ComplexNetworkAnalysis
#paper #Bibliometric #Knowledge_Graph
π4
π Machine Learning with Graphs - Node Embeddings
π₯SDML is partnering with Houston Machine Learning on a series about machine learning with graphs.
π½ Watch
π±Channel: @ComplexNetworkAnalysis
#video #Machine_Learning #Graph #Node_Embedding
π₯SDML is partnering with Houston Machine Learning on a series about machine learning with graphs.
π½ Watch
π±Channel: @ComplexNetworkAnalysis
#video #Machine_Learning #Graph #Node_Embedding
YouTube
Machine Learning with Graphs - Node Embeddings
SDML is partnering with Houston Machine Learning on a series about machine learning with graphs. The content will be mainly based on the Stanford course: https://web.stanford.edu/class/cs224w/
Series schedule:
Introduction; Machine Learning for Graphs
Traditionalβ¦
Series schedule:
Introduction; Machine Learning for Graphs
Traditionalβ¦
π3π2
π Artificial Intelligence for Complex Network: Potential, Methodology and Application
π Publish year: 2024
π§βπ»Authors: Jingtao Ding, Chang Liu, Yu Zheng, Yunke Zhang, Zihan Yu, Ruikun Li, Hongyi Chen, Jinghua Piao, Huandong Wang, Jiazhen Liu, Yong Li
π’University: Tsinghua University
π Study the paper
π±Channel: @ComplexNetworkAnalysis
#paper #Artificial_Intelligence #Potential #Methodology #Application
π Publish year: 2024
π§βπ»Authors: Jingtao Ding, Chang Liu, Yu Zheng, Yunke Zhang, Zihan Yu, Ruikun Li, Hongyi Chen, Jinghua Piao, Huandong Wang, Jiazhen Liu, Yong Li
π’University: Tsinghua University
π Study the paper
π±Channel: @ComplexNetworkAnalysis
#paper #Artificial_Intelligence #Potential #Methodology #Application
π3π₯2
πStanford Network Analysis Platform (SNAP)
π₯Purpose:
SNAP is a general-purpose network analysis and graph mining library.
πΉLanguage: It is written in C++.
πΉScalability: SNAP easily scales to handle massive networks with hundreds of millions of nodes and billions of edges.
π₯Functionality:
Efficiently manipulates large graphs.
Calculates structural properties.
Generates regular and random graphs.
Supports attributes on nodes and edges.
πΉPython Interface: Snap.py provides a Python interface for SNAP, combining the performance benefits of SNAP with the flexibility of Python.
π₯Stanford Large Network Dataset Collection:
This collection includes over 50 large network datasets:
πΉSocial networks: Represent online social interactions between people.
πΉNetworks with ground-truth communities: These are community structures in social and information networks.
πΉCommunication networks: Email communication networks, where edges represent communication between individuals.
π₯Tutorials and Recent Events:
SNAP hosts tutorials on topics such as deep learning for network biology, representation learning on networks, and more.
They have organized workshops and tutorials at conferences like ISMB, The Web Conference, and WWW.
π Study
π²Channel: @ComplexNetworkAnalysis
#paper #Graph #code #Python #Tutorials #Dataset
π₯Purpose:
SNAP is a general-purpose network analysis and graph mining library.
πΉLanguage: It is written in C++.
πΉScalability: SNAP easily scales to handle massive networks with hundreds of millions of nodes and billions of edges.
π₯Functionality:
Efficiently manipulates large graphs.
Calculates structural properties.
Generates regular and random graphs.
Supports attributes on nodes and edges.
πΉPython Interface: Snap.py provides a Python interface for SNAP, combining the performance benefits of SNAP with the flexibility of Python.
π₯Stanford Large Network Dataset Collection:
This collection includes over 50 large network datasets:
πΉSocial networks: Represent online social interactions between people.
πΉNetworks with ground-truth communities: These are community structures in social and information networks.
πΉCommunication networks: Email communication networks, where edges represent communication between individuals.
π₯Tutorials and Recent Events:
SNAP hosts tutorials on topics such as deep learning for network biology, representation learning on networks, and more.
They have organized workshops and tutorials at conferences like ISMB, The Web Conference, and WWW.
π Study
π²Channel: @ComplexNetworkAnalysis
#paper #Graph #code #Python #Tutorials #Dataset
π₯2π2π1
π A Survey on Temporal Knowledge Graph: Representation Learning and Applications
π Publish year: 2024
π§βπ»Authors: JLi Cai, Xin Mao, Yuhao Zhou, Zhaoguang Long, Changxu Wu, Man Lan
π’Universities: East China Nomal University, Guizhou University, Tsinghua University
π Study the paper
π±Channel: @ComplexNetworkAnalysis
#paper #Temporal #Knowledge_Graph #Representation_Learning #Application #survey
π Publish year: 2024
π§βπ»Authors: JLi Cai, Xin Mao, Yuhao Zhou, Zhaoguang Long, Changxu Wu, Man Lan
π’Universities: East China Nomal University, Guizhou University, Tsinghua University
π Study the paper
π±Channel: @ComplexNetworkAnalysis
#paper #Temporal #Knowledge_Graph #Representation_Learning #Application #survey
π3π2
π Higher-Order Networks Representation and Learning: A Survey
π Publish year: 2024
π§βπ»Authors: Hao Tian and Reza Zafarani
π’Universities: Syracuse University
π Study the paper
π²Channel: @ComplexNetworkAnalysis
#paper #Higher_Order #Survey
π Publish year: 2024
π§βπ»Authors: Hao Tian and Reza Zafarani
π’Universities: Syracuse University
π Study the paper
π²Channel: @ComplexNetworkAnalysis
#paper #Higher_Order #Survey
π6
πData Mining Graphs and Networks
π₯Technical Paper
π₯Graph mining is a process in which the mining techniques are used in finding a pattern or relationship in the given real-world collection of graphs. By mining the graph, frequent substructures and relationships can be identified which helps in clustering the graph sets, finding a relationship between graph sets, or discriminating or characterizing graphs. Predicting these patterning trends can help in building models for the enhancement of any application that is used in real-time. To implement the process of graph mining, one must learn to mine frequent subgraphs.
π Study
π²Channel: @ComplexNetworkAnalysis
#paper #Graph #code
π₯Technical Paper
π₯Graph mining is a process in which the mining techniques are used in finding a pattern or relationship in the given real-world collection of graphs. By mining the graph, frequent substructures and relationships can be identified which helps in clustering the graph sets, finding a relationship between graph sets, or discriminating or characterizing graphs. Predicting these patterning trends can help in building models for the enhancement of any application that is used in real-time. To implement the process of graph mining, one must learn to mine frequent subgraphs.
π Study
π²Channel: @ComplexNetworkAnalysis
#paper #Graph #code
GeeksforGeeks
Data Mining Graphs and Networks - GeeksforGeeks
A Computer Science portal for geeks. It contains well written, well thought and well explained computer science and programming articles, quizzes and practice/competitive programming/company interview Questions.
π7
π Link Prediction Using Graph Neural Networks for Recommendation Systems
π Journal: Procedia Computer Science
π Publish year: 2023
π§βπ»Authors: Hmaidi Safae, Lazaar Mohamed , Abdellah Chehri , El Madani El Alami Yasser , Rachid Saadane
π’Universities: University in Rabat, Rabat, Morocco, Royal Military College of Canada
π Study the paper
π±Channel: @ComplexNetworkAnalysis
#paper #Link_Prediction #GNN #Recommender_Systems
π Journal: Procedia Computer Science
π Publish year: 2023
π§βπ»Authors: Hmaidi Safae, Lazaar Mohamed , Abdellah Chehri , El Madani El Alami Yasser , Rachid Saadane
π’Universities: University in Rabat, Rabat, Morocco, Royal Military College of Canada
π Study the paper
π±Channel: @ComplexNetworkAnalysis
#paper #Link_Prediction #GNN #Recommender_Systems
π7
πIntro to Gephi & Visualize clusters
π₯Goals:
-Learn how to use Gephi
-Explore a directed network
-Export a network map
-Annotate clusters
π Study
π²Channel: @ComplexNetworkAnalysis
#paper #Gephi
π₯Goals:
-Learn how to use Gephi
-Explore a directed network
-Export a network map
-Annotate clusters
π Study
π²Channel: @ComplexNetworkAnalysis
#paper #Gephi
π8