๐ Artificial Intelligence for Complex Network: Potential, Methodology and Application
๐ Publish year: 2024
๐งโ๐ปAuthors: Jingtao Ding, Chang Liu, Yu Zheng, Yunke Zhang, Zihan Yu, Ruikun Li, Hongyi Chen, Jinghua Piao, Huandong Wang, Jiazhen Liu, Yong Li
๐ขUniversity: Tsinghua University
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๐ฑChannel: @ComplexNetworkAnalysis
#paper #Artificial_Intelligence #Potential #Methodology #Application
๐ Publish year: 2024
๐งโ๐ปAuthors: Jingtao Ding, Chang Liu, Yu Zheng, Yunke Zhang, Zihan Yu, Ruikun Li, Hongyi Chen, Jinghua Piao, Huandong Wang, Jiazhen Liu, Yong Li
๐ขUniversity: Tsinghua University
๐ Study the paper
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#paper #Artificial_Intelligence #Potential #Methodology #Application
๐3๐ฅ2
  ๐Stanford Network Analysis Platform (SNAP)
๐ฅPurpose:
SNAP is a general-purpose network analysis and graph mining library.
๐นLanguage: It is written in C++.
๐นScalability: SNAP easily scales to handle massive networks with hundreds of millions of nodes and billions of edges.
๐ฅFunctionality:
Efficiently manipulates large graphs.
Calculates structural properties.
Generates regular and random graphs.
Supports attributes on nodes and edges.
๐นPython Interface: Snap.py provides a Python interface for SNAP, combining the performance benefits of SNAP with the flexibility of Python.
๐ฅStanford Large Network Dataset Collection:
This collection includes over 50 large network datasets:
๐นSocial networks: Represent online social interactions between people.
๐นNetworks with ground-truth communities: These are community structures in social and information networks.
๐นCommunication networks: Email communication networks, where edges represent communication between individuals.
๐ฅTutorials 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.
 
๐ Study
 
๐ฒChannel: @ComplexNetworkAnalysis
 
#paper #Graph #code #Python #Tutorials #Dataset
๐ฅPurpose:
SNAP is a general-purpose network analysis and graph mining library.
๐นLanguage: It is written in C++.
๐นScalability: SNAP easily scales to handle massive networks with hundreds of millions of nodes and billions of edges.
๐ฅFunctionality:
Efficiently manipulates large graphs.
Calculates structural properties.
Generates regular and random graphs.
Supports attributes on nodes and edges.
๐นPython Interface: Snap.py provides a Python interface for SNAP, combining the performance benefits of SNAP with the flexibility of Python.
๐ฅStanford Large Network Dataset Collection:
This collection includes over 50 large network datasets:
๐นSocial networks: Represent online social interactions between people.
๐นNetworks with ground-truth communities: These are community structures in social and information networks.
๐นCommunication networks: Email communication networks, where edges represent communication between individuals.
๐ฅTutorials 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.
๐ Study
๐ฒChannel: @ComplexNetworkAnalysis
#paper #Graph #code #Python #Tutorials #Dataset
๐ฅ2๐2๐1
  ๐ A Survey on Temporal Knowledge Graph: Representation Learning and Applications
๐ Publish year: 2024
๐งโ๐ปAuthors: JLi Cai, Xin Mao, Yuhao Zhou, Zhaoguang Long, Changxu Wu, Man Lan
๐ขUniversities: East China Nomal University, Guizhou University, Tsinghua University
๐ Study the paper
๐ฑChannel: @ComplexNetworkAnalysis
#paper #Temporal #Knowledge_Graph #Representation_Learning #Application #survey
๐ Publish year: 2024
๐งโ๐ปAuthors: JLi Cai, Xin Mao, Yuhao Zhou, Zhaoguang Long, Changxu Wu, Man Lan
๐ขUniversities: East China Nomal University, Guizhou University, Tsinghua University
๐ Study the paper
๐ฑChannel: @ComplexNetworkAnalysis
#paper #Temporal #Knowledge_Graph #Representation_Learning #Application #survey
๐3๐2
  ๐ Higher-Order Networks Representation and Learning: A Survey
๐ Publish year: 2024
๐งโ๐ปAuthors: Hao Tian and Reza Zafarani
๐ขUniversities: Syracuse University
๐ Study the paper
๐ฒChannel: @ComplexNetworkAnalysis
#paper #Higher_Order #Survey
๐ Publish year: 2024
๐งโ๐ปAuthors: Hao Tian and Reza Zafarani
๐ขUniversities: Syracuse University
๐ Study the paper
๐ฒChannel: @ComplexNetworkAnalysis
#paper #Higher_Order #Survey
๐6
  ๐Data Mining Graphs and Networks
๐ฅTechnical Paper
๐ฅGraph 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.
 
๐ Study
 
๐ฒChannel: @ComplexNetworkAnalysis
 
#paper #Graph #code
  
  ๐ฅTechnical Paper
๐ฅGraph 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.
๐ Study
๐ฒChannel: @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.
๐7
  ๐ Link Prediction Using Graph Neural Networks for Recommendation Systems
๐ Journal: Procedia Computer Science
๐ Publish year: 2023
๐งโ๐ปAuthors: Hmaidi Safae, Lazaar Mohamed , Abdellah Chehri , El Madani El Alami Yasser , Rachid Saadane
๐ขUniversities: University in Rabat, Rabat, Morocco, Royal Military College of Canada
๐ Study the paper
๐ฑChannel: @ComplexNetworkAnalysis
#paper #Link_Prediction #GNN #Recommender_Systems
๐ Journal: Procedia Computer Science
๐ Publish year: 2023
๐งโ๐ปAuthors: Hmaidi Safae, Lazaar Mohamed , Abdellah Chehri , El Madani El Alami Yasser , Rachid Saadane
๐ขUniversities: University in Rabat, Rabat, Morocco, Royal Military College of Canada
๐ Study the paper
๐ฑChannel: @ComplexNetworkAnalysis
#paper #Link_Prediction #GNN #Recommender_Systems
๐7
  ๐Intro to Gephi & Visualize clusters
๐ฅGoals:
-Learn how to use Gephi
-Explore a directed network
-Export a network map
-Annotate clusters
 
๐ Study
 
๐ฒChannel: @ComplexNetworkAnalysis
 
#paper #Gephi
๐ฅGoals:
-Learn how to use Gephi
-Explore a directed network
-Export a network map
-Annotate clusters
๐ Study
๐ฒChannel: @ComplexNetworkAnalysis
#paper #Gephi
๐8
  ๐ Progress on network modeling and analysis of gut microecology: a review
๐ Journal: Applied and Environmental Microbiology (I.F=4.4)
๐ Publish year: 2024
๐งโ๐ปAuthors: Meng Luo, Jinlin Zhu, Jiajia Jia, Hao Zhang, Jianxin Zhao
๐ขUniversity: Jiangnan University
๐ Study the paper
๐ฑChannel: @ComplexNetworkAnalysis
#paper #Progress #gut #microecology #review
๐ Journal: Applied and Environmental Microbiology (I.F=4.4)
๐ Publish year: 2024
๐งโ๐ปAuthors: Meng Luo, Jinlin Zhu, Jiajia Jia, Hao Zhang, Jianxin Zhao
๐ขUniversity: Jiangnan University
๐ Study the paper
๐ฑChannel: @ComplexNetworkAnalysis
#paper #Progress #gut #microecology #review
๐3
  ๐The Essential Guide to GNN (Graph Neural Networks)
๐ฅTechnical Paper
๐ฅ Graph neural networks (GNNs) are a set of deep learning methods that work in the graph domain. These networks have recently been applied in multiple areas including; combinatorial optimization, recommender systems, computer vision โ just to mention a few. These networks can also be used to model large systems such as social networks, protein-protein interaction networks, knowledge graphs among other research areas. Unlike other data such as images, graph data works in the non-euclidean space. Graph analysis is therefore aimed at node classification, link prediction, and clustering.
๐ Study
 
๐ฒChannel: @ComplexNetworkAnalysis
 
#paper #Graph #code #GNN
  
  ๐ฅTechnical Paper
๐ฅ Graph neural networks (GNNs) are a set of deep learning methods that work in the graph domain. These networks have recently been applied in multiple areas including; combinatorial optimization, recommender systems, computer vision โ just to mention a few. These networks can also be used to model large systems such as social networks, protein-protein interaction networks, knowledge graphs among other research areas. Unlike other data such as images, graph data works in the non-euclidean space. Graph analysis is therefore aimed at node classification, link prediction, and clustering.
๐ Study
๐ฒChannel: @ComplexNetworkAnalysis
#paper #Graph #code #GNN
cnvrg
  
  The Essential Guide to GNN (Graph Neural Networks) | Intelยฎ Tiberโข AI Studio
  Graph neural networks (GNNs) are a set of deep learning methods that work in the graph domain. These networks have recently been applied in multiple areas
๐5
  ๐What Are Graph Neural Networks? How GNNs Work, Explained with Examples
๐ฅTechnical Paper
๐ Study
 
๐ฒChannel: @ComplexNetworkAnalysis
 
#paper #Graph #code #GNN #python
  
  ๐ฅTechnical Paper
๐ Study
๐ฒChannel: @ComplexNetworkAnalysis
#paper #Graph #code #GNN #python
freeCodeCamp.org
  
  What Are Graph Neural Networks? How GNNs Work, Explained with Examples
  By Rishit Dagli Graph Neural Networks are getting more and more popular and are being used extensively in a wide variety of projects. In this article, I help you get started and understand how graph neural networks work while also trying to address t...
๐4๐1
  ๐ Toward Point-of-Interest Recommendation Systems: A Critical Review on Deep-Learning Approaches
๐ Journal: Electronics (I.F=2.9)
๐ Publish year: 2022
๐งโ๐ปAuthors: Sadaf Safavi ,Mehrdad Jalali ,Mahboobeh Houshmand
๐ขUniversities: Islamic Azad University, Karlsruhe Institute of Technology
๐ Study the paper
๐ฒChannel: @ComplexNetworkAnalysis
#paper #Recommendation_Systems #Review
๐ Journal: Electronics (I.F=2.9)
๐ Publish year: 2022
๐งโ๐ปAuthors: Sadaf Safavi ,Mehrdad Jalali ,Mahboobeh Houshmand
๐ขUniversities: Islamic Azad University, Karlsruhe Institute of Technology
๐ Study the paper
๐ฒChannel: @ComplexNetworkAnalysis
#paper #Recommendation_Systems #Review
๐4
  ๐ A review on graph neural networks for predicting synergistic drug combinations
๐ Journal: Artificial Intelligence Review (I.F=12)
๐ Publish year: 2024
๐งโ๐ปAuthors: Milad Besharatifard, Fatemeh Vafaee
๐ขUniversity: University of New South Wales (UNSW), Sydney, Australia
๐ Study the paper
๐ฑChannel: @ComplexNetworkAnalysis
#paper #GNN #predicting #synergistic #drug_combinations #review
๐ Journal: Artificial Intelligence Review (I.F=12)
๐ Publish year: 2024
๐งโ๐ปAuthors: Milad Besharatifard, Fatemeh Vafaee
๐ขUniversity: University of New South Wales (UNSW), Sydney, Australia
๐ Study the paper
๐ฑChannel: @ComplexNetworkAnalysis
#paper #GNN #predicting #synergistic #drug_combinations #review
๐5โค1๐1
  A_review_on_graph_based_approaches_for_network_security_monitoring.pdf
    1.1 MB
  ๐ A review on graph-based approaches for network security monitoring and botnet detection
๐ Journal: International Journal of Information Security (I.F=3.2)
๐ Publish year: 2024
๐งโ๐ปAuthors: Sofiane Lagraa, Martin Husรกk, Hamida Seba, Satyanarayana Vuppala, Radu State & Moussa Ouedraogo
๐ขUniversities: University of Luxembourg,Masaryk University
๐ Study the paper
๐ฒChannel: @ComplexNetworkAnalysis
#paper #network_security_monitoring #botnet_detection #Review
๐ Journal: International Journal of Information Security (I.F=3.2)
๐ Publish year: 2024
๐งโ๐ปAuthors: Sofiane Lagraa, Martin Husรกk, Hamida Seba, Satyanarayana Vuppala, Radu State & Moussa Ouedraogo
๐ขUniversities: University of Luxembourg,Masaryk University
๐ Study the paper
๐ฒChannel: @ComplexNetworkAnalysis
#paper #network_security_monitoring #botnet_detection #Review
โค2๐ฅ2๐1๐1
  ๐Introducing TensorFlow Graph Neural Networks
๐ฅTechnical Paper
๐ Study
 
๐ฒChannel: @ComplexNetworkAnalysis
 
#paper #Graph #code #TensorFlow #python
  
  ๐ฅTechnical Paper
๐ Study
๐ฒChannel: @ComplexNetworkAnalysis
#paper #Graph #code #TensorFlow #python
blog.tensorflow.org
  
  Introducing TensorFlow Graph Neural Networks
  Introducing TensorFlow GNN, a library to build Graph Neural Networks on the TensorFlow
platform.
platform.
โค3๐3
  ๐Graph-Based Data Science, Machine Learning, and AI
๐ฅTechnical Paper
๐ Study
 
๐ฒChannel: @ComplexNetworkAnalysis
 
#paper #Graph #AI #Data_Science #Machine_Learning
  
  ๐ฅTechnical Paper
๐ Study
๐ฒChannel: @ComplexNetworkAnalysis
#paper #Graph #AI #Data_Science #Machine_Learning
DZone
  
  Graph-Based Data Science, Machine Learning, and AI
  What does graphing have to do with machine learning and data science? A lot, actually โ learn more in The Year of the Graph Newsletter's Spring 2021 edition.
โค3๐2
  ๐ Recommendation Systems for Education: Systematic Review
๐ Journal: Electronics (I.F=2.9)
๐ Publish year: 2021
๐งโ๐ปAuthors: Marรญa Cora Urdaneta-Ponte, Amaia Mendez-Zorrilla, Ibon Oleagordia-Ruiz
๐ขUniversities: University of Deusto, Andres Bello Catholic University (UCAB)
๐ Study the paper
๐ฑChannel: @ComplexNetworkAnalysis
#paper #Recommender_Systems #Education #review
๐ Journal: Electronics (I.F=2.9)
๐ Publish year: 2021
๐งโ๐ปAuthors: Marรญa Cora Urdaneta-Ponte, Amaia Mendez-Zorrilla, Ibon Oleagordia-Ruiz
๐ขUniversities: University of Deusto, Andres Bello Catholic University (UCAB)
๐ Study the paper
๐ฑChannel: @ComplexNetworkAnalysis
#paper #Recommender_Systems #Education #review
๐3
  ๐ Important Reminder: 
๐ฅ Deadline Approaching for
๐ "Advances in Graph-Based Data Mining" Special Issue
๐ถTopics:
โซ๏ธgraph-based data mining
โซ๏ธnetwork analysis
โซ๏ธgraph algorithms
โซ๏ธgraph neural networks
โซ๏ธcommunity detection
โซ๏ธcomplex data relationships
โซ๏ธknowledge extraction
๐ More information & Submission
๐ฒChannel: @ComplexNetworkAnalysis
#journal #special_issue
๐ฅ Deadline Approaching for
๐ "Advances in Graph-Based Data Mining" Special Issue
๐ถTopics:
โซ๏ธgraph-based data mining
โซ๏ธnetwork analysis
โซ๏ธgraph algorithms
โซ๏ธgraph neural networks
โซ๏ธcommunity detection
โซ๏ธcomplex data relationships
โซ๏ธknowledge extraction
๐ More information & Submission
๐ฒChannel: @ComplexNetworkAnalysis
#journal #special_issue
๐3
  ๐ A social network of crime: A review of the use of social networks for crime and the detection of crime
๐ Journal: Online Social Networks and Media (I.F=7.61)
๐ Publish year: 2024
๐งโ๐ปAuthors: Brett Drury, Samuel Morais Drury, Md Arafatur Rahman, Ihsan Ullah
๐ขUniversities: National University of Ireland Galway, University College Dublin, Liverpool Hope University, University Malaysia Pahang
๐ Study the paper
๐ฒChannel: @ComplexNetworkAnalysis
#paper #crime #social_network #Review
๐ Journal: Online Social Networks and Media (I.F=7.61)
๐ Publish year: 2024
๐งโ๐ปAuthors: Brett Drury, Samuel Morais Drury, Md Arafatur Rahman, Ihsan Ullah
๐ขUniversities: National University of Ireland Galway, University College Dublin, Liverpool Hope University, University Malaysia Pahang
๐ Study the paper
๐ฒChannel: @ComplexNetworkAnalysis
#paper #crime #social_network #Review
๐4
  ๐ Social search: Retrieving information in Online Social platforms โ A survey
๐ Journal: Online Social Networks and Media
๐ Publish year: 2023
๐งโ๐ปAuthors: Maddalena Amendola, Andrea Passarella, Raffaele Perego
๐ขUniversity: University of Pisa
๐ Study the paper
๐ฑChannel: @ComplexNetworkAnalysis
#paper #Social #Retrieving_information #survey
๐ Journal: Online Social Networks and Media
๐ Publish year: 2023
๐งโ๐ปAuthors: Maddalena Amendola, Andrea Passarella, Raffaele Perego
๐ขUniversity: University of Pisa
๐ Study the paper
๐ฑChannel: @ComplexNetworkAnalysis
#paper #Social #Retrieving_information #survey
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