πRecommending on graphs: a comprehensive review from a data perspective
π Journal: User Modeling and User-Adapted Interaction (I.F=5.7)
πPublish year: 2023
πStudy paper
π±Channel: @ComplexNetworkAnalysis
#paper #Recommending #perspective #review
π Journal: User Modeling and User-Adapted Interaction (I.F=5.7)
πPublish year: 2023
πStudy paper
π±Channel: @ComplexNetworkAnalysis
#paper #Recommending #perspective #review
β€2π1
π Tutorial: Graph Neural Networks in TensorFlow: A Practical Guide
π₯Free recorded course by Sami Abu-el-Haija, Neslihan Bulut, Bryan Perozzi, and Anton Tsitsulin
π₯Graphs are general data structures that can represent information from a variety of domains (social, biomedical, online transactions, and many more). Graph Neural Networks (GNNs) are quickly becoming the de-facto Machine Learning models for learning from Graph data and hereby infer missing information, such as, predicting labels of nodes or imputing missing edges. The main goal of this tutorial is to help practitioners and researchers to implement GNNs in a TensorFlow setting. Specifically, the tutorial will be mostly hands-on, and will walk the audience through a process of running existing GNNs on heterogeneous graph data, and a tour of how to implement new GNN models. The hands-on portion of the tutorial will be based on TF-GNN, a new framework that we open-sourced.
π½ Watch
π²Channel: @ComplexNetworkAnalysis
#video #course #Graph #GNN #code #python #tensorflow
π₯Free recorded course by Sami Abu-el-Haija, Neslihan Bulut, Bryan Perozzi, and Anton Tsitsulin
π₯Graphs are general data structures that can represent information from a variety of domains (social, biomedical, online transactions, and many more). Graph Neural Networks (GNNs) are quickly becoming the de-facto Machine Learning models for learning from Graph data and hereby infer missing information, such as, predicting labels of nodes or imputing missing edges. The main goal of this tutorial is to help practitioners and researchers to implement GNNs in a TensorFlow setting. Specifically, the tutorial will be mostly hands-on, and will walk the audience through a process of running existing GNNs on heterogeneous graph data, and a tour of how to implement new GNN models. The hands-on portion of the tutorial will be based on TF-GNN, a new framework that we open-sourced.
π½ Watch
π²Channel: @ComplexNetworkAnalysis
#video #course #Graph #GNN #code #python #tensorflow
YouTube
Tutorial: Graph Neural Networks in TensorFlow: A Practical Guide
Organizers: Sami Abu-el-Haija, Neslihan Bulut, Bryan Perozzi, and Anton Tsitsulin
Abstract: Graphs are general data structures that can represent information from a variety of domains (social, biomedical, online transactions, and many more). Graph Neuralβ¦
Abstract: Graphs are general data structures that can represent information from a variety of domains (social, biomedical, online transactions, and many more). Graph Neuralβ¦
π4
πSocial network research in the family business literature: a review and integration
π Journal: Small Business Economics (I.F=6.4)
πPublish year: 2023
πStudy paper
π±Channel: @ComplexNetworkAnalysis
#paper #research #family_business #literature #integration #review
π Journal: Small Business Economics (I.F=6.4)
πPublish year: 2023
πStudy paper
π±Channel: @ComplexNetworkAnalysis
#paper #research #family_business #literature #integration #review
π2
πGenerative Diffusion Models on Graphs: Methods and Applications
π CONFERENCE: INTERNATIONAL JOINT CONFERENCE ON ARTIFICIAL INTELLIGENCE (IJCAI 2023)
πPublish year: 2023
πStudy paper
π²Channel: @ComplexNetworkAnalysis
#paper #Diffusion #Graph #Generative #DeepLearning
π CONFERENCE: INTERNATIONAL JOINT CONFERENCE ON ARTIFICIAL INTELLIGENCE (IJCAI 2023)
πPublish year: 2023
πStudy paper
π²Channel: @ComplexNetworkAnalysis
#paper #Diffusion #Graph #Generative #DeepLearning
π7
πGraph neural networks for materials science and
chemistry
π Journal: Communications Materials (I.F=7.8)
πPublish year: 2022
πStudy paper
π±Channel: @ComplexNetworkAnalysis
#paper #GNN #materials_science #chemistry
chemistry
π Journal: Communications Materials (I.F=7.8)
πPublish year: 2022
πStudy paper
π±Channel: @ComplexNetworkAnalysis
#paper #GNN #materials_science #chemistry
π2
πNetwork Medicine in Pathobiology
π journal: The American Journal of Pathology(I.F=5.1)
πPublish year: 2019
πStudy paper
π²Channel: @ComplexNetworkAnalysis
#paper #Pathobiology #network #Medicine
π journal: The American Journal of Pathology(I.F=5.1)
πPublish year: 2019
πStudy paper
π²Channel: @ComplexNetworkAnalysis
#paper #Pathobiology #network #Medicine
π6
πA Survey on the Recent Advances of Deep Community Detection
π Journal: APPLIED SCIENCES-BASEL (I.F=2.7)
πPublish year: 2021
πStudy paper
π±Channel: @ComplexNetworkAnalysis
#paper #Deep #Community_Detection #survey
π Journal: APPLIED SCIENCES-BASEL (I.F=2.7)
πPublish year: 2021
πStudy paper
π±Channel: @ComplexNetworkAnalysis
#paper #Deep #Community_Detection #survey
π4
πMolecular networks in Network Medicine
π Journal: WILEY (I.F=5.609)
πPublish year: 2020
πStudy paper
π²Channel: @ComplexNetworkAnalysis
#paper #Molecular_networks #Medicine
π Journal: WILEY (I.F=5.609)
πPublish year: 2020
πStudy paper
π²Channel: @ComplexNetworkAnalysis
#paper #Molecular_networks #Medicine
π4β€1
πA comprehensive review and evaluation of graph neural networks for non-coding RNA and complex disease associations
π Journal: BRIEFINGS IN BIOINFORMATICS (I.F=10.6)
πPublish year: 2023
πStudy paper
π±Channel: @ComplexNetworkAnalysis
#paper #GNN #non_coding #RNA #complex_disease #review
π Journal: BRIEFINGS IN BIOINFORMATICS (I.F=10.6)
πPublish year: 2023
πStudy paper
π±Channel: @ComplexNetworkAnalysis
#paper #GNN #non_coding #RNA #complex_disease #review
π3
πGraph Attention Networks
π₯Technical paper
π Study
π²Channel: @ComplexNetworkAnalysis
#paper #Graph #GAT #Machine_Learning #Attention #Neural_Network
π₯Technical paper
π Study
π²Channel: @ComplexNetworkAnalysis
#paper #Graph #GAT #Machine_Learning #Attention #Neural_Network
Baeldung on Computer Science
Graph Attention Networks | Baeldung on Computer Science
Explore graph neural networks that use attention.
π4
πA Survey on Graph Neural Networks for Time Series: Forecasting, Classification, Imputation, and Anomaly Detection
πPublish year: 2023
πStudy paper
π±Channel: @ComplexNetworkAnalysis
#paper #GNN #Time_Series #Forecasting #Classification #Imputation #Anomaly_Detection #survey
πPublish year: 2023
πStudy paper
π±Channel: @ComplexNetworkAnalysis
#paper #GNN #Time_Series #Forecasting #Classification #Imputation #Anomaly_Detection #survey
π4
π Machine Learning with Graphs: Generative Models for Graphs
π₯Free recorded course by Jure Leskovec, Computer Science, PhD
π₯In this lecture, we will cover generative models for graphs. The goal of generative models for graphs is to generate synthetic graphs which are similar to given example graphs. Graph generation is important as it can offer insight on the formulation process of graphs, which is crucial for predictions, simulations and anomaly detections on graphs. In the first part, we will introduce the properties of real-world graphs, where a successful graph generative model should fit these properties. These graph statistics include degree distribution, clustering coefficient, connected components and path length.
π½ Watch
π²Channel: @ComplexNetworkAnalysis
#video #course #Graph #Machine_Learning #Generative_Models
π₯Free recorded course by Jure Leskovec, Computer Science, PhD
π₯In this lecture, we will cover generative models for graphs. The goal of generative models for graphs is to generate synthetic graphs which are similar to given example graphs. Graph generation is important as it can offer insight on the formulation process of graphs, which is crucial for predictions, simulations and anomaly detections on graphs. In the first part, we will introduce the properties of real-world graphs, where a successful graph generative model should fit these properties. These graph statistics include degree distribution, clustering coefficient, connected components and path length.
π½ Watch
π²Channel: @ComplexNetworkAnalysis
#video #course #Graph #Machine_Learning #Generative_Models
YouTube
Stanford CS224W: Machine Learning with Graphs | 2021 | Lecture 14.1 - Generative Models for Graphs
For more information about Stanfordβs Artificial Intelligence professional and graduate programs, visit: https://stanford.io/3jO8OsE
Jure Leskovec
Computer Science, PhD
In this lecture, we will cover generative models for graphs. The goal of generativeβ¦
Jure Leskovec
Computer Science, PhD
In this lecture, we will cover generative models for graphs. The goal of generativeβ¦
π6
π Graph Analytics and Graph-based Machine Learning
π₯Free recorded course by Clair Sullivan(Neo4j)
π₯Machine learning has traditionally revolved around creating models around data that is characterized by embeddings attributed to individual observations. However, this ignores a signal that could potentially be very strong: the relationships between data points. Network graphs provide great opportunities for identifying relationships that we may not even realize exist within our data. Further, a variety of methods exist to create embeddings of graphs that can enrich models and provide new insights.
In this talk we will look at some examples of common ML problems and demonstrate how they can take advantage of graph analytics and graph-based machine learning. We will also demonstrate how graph embeddings can be used to enhance existing ML pipelines.
π½ Watch
π²Channel: @ComplexNetworkAnalysis
#video #course #Graph #Machine_Learning
π₯Free recorded course by Clair Sullivan(Neo4j)
π₯Machine learning has traditionally revolved around creating models around data that is characterized by embeddings attributed to individual observations. However, this ignores a signal that could potentially be very strong: the relationships between data points. Network graphs provide great opportunities for identifying relationships that we may not even realize exist within our data. Further, a variety of methods exist to create embeddings of graphs that can enrich models and provide new insights.
In this talk we will look at some examples of common ML problems and demonstrate how they can take advantage of graph analytics and graph-based machine learning. We will also demonstrate how graph embeddings can be used to enhance existing ML pipelines.
π½ Watch
π²Channel: @ComplexNetworkAnalysis
#video #course #Graph #Machine_Learning
YouTube
Graph Analytics and Graph-based Machine Learning
Machine learning has traditionally revolved around creating models around data that is characterized by embeddings attributed to individual observations. However, this ignores a signal that could potentially be very strong: the relationships between dataβ¦
π4π1
πWhat Are Higher-Order Networks?
π Journal: SIAM Review
πPublish year: 2023
πStudy paper
π±Channel: @ComplexNetworkAnalysis
#paper #Higher_Order_Networks
π Journal: SIAM Review
πPublish year: 2023
πStudy paper
π±Channel: @ComplexNetworkAnalysis
#paper #Higher_Order_Networks
π2
πMachine Learning for Refining Knowledge Graphs: A Survey
π Journal: acm digital library (I.F=14.324)
πPublish year: 2020
πStudy paper
π²Channel: @ComplexNetworkAnalysis
#paper #Machine_Learning #Knowledge_Graphs #Survey
π Journal: acm digital library (I.F=14.324)
πPublish year: 2020
πStudy paper
π²Channel: @ComplexNetworkAnalysis
#paper #Machine_Learning #Knowledge_Graphs #Survey
π₯4π2π1
πA Survey on Hyperlink Prediction
πPublish year: 2022
πStudy paper
π±Channel: @ComplexNetworkAnalysis
#paper #Hyperlink #prediction #survey
πPublish year: 2022
πStudy paper
π±Channel: @ComplexNetworkAnalysis
#paper #Hyperlink #prediction #survey
π2π₯1
πA review of graph neural networks: concepts, architectures, techniques, challenges, datasets, applications, and future directions
π Journal: Journal of Big Data (I.F=10.835)
πPublish year: 2024
πStudy paper
π²Channel: @ComplexNetworkAnalysis
#paper #GNN #GraphSage #GAT #Survey
π Journal: Journal of Big Data (I.F=10.835)
πPublish year: 2024
πStudy paper
π²Channel: @ComplexNetworkAnalysis
#paper #GNN #GraphSage #GAT #Survey
π₯4π2
πA survey on deep learning based Point-of-Interest (POI) recommendations
π Journal: Neurocomputing (I.F= 6)
πPublish year: 2020
πStudy paper
π±Channel: @ComplexNetworkAnalysis
#paper #Deep_learning #POI #recommendation #survey
π Journal: Neurocomputing (I.F= 6)
πPublish year: 2020
πStudy paper
π±Channel: @ComplexNetworkAnalysis
#paper #Deep_learning #POI #recommendation #survey
π2π€©1
πToward Point-of-Interest Recommendation Systems: A Critical Review on Deep-Learning Approaches
π Journal: Electronics (I.F=10.835)
πPublish year: 2022
πStudy paper
π²Channel: @ComplexNetworkAnalysis
#paper #Recommendation_Systems #Deep_Learning #Review
π Journal: Electronics (I.F=10.835)
πPublish year: 2022
πStudy paper
π²Channel: @ComplexNetworkAnalysis
#paper #Recommendation_Systems #Deep_Learning #Review
β€3π2