π Machine Learning with Graphs: Deep Generative Models for Graphs, Graph RNN: Generating Realistic Graphs, Scaling Up & Evaluating Graph Gen, Applications of Deep Graph Generation.
π₯Free recorded course by Jure Leskovec, Computer Science, PhD
π₯this lecture, focus on deep generative models for graphs. We outline 2 types of tasks within the problem of graph generation: (1) realistic graph generation, where the goal is to generate graphs that are similar to a given set of graphs; (2) goal-directed graph generation, where we want to generate graphs that optimize given objectives/constraints. First, we recap the basics for generative models and deep generative models; then, in next parts introduce and focus on GraphRNN, one of the first deep generative models for graph; and finally, discuss GCPN, a deep graph generative model designed specifically for application to molecule generation.
π½ Watch: part1 part2 part3 part4
π²Channel: @ComplexNetworkAnalysis
#video #course #Graph #Machine_Learning #GCPN #GraphRNN #DGNN #GNN
π₯Free recorded course by Jure Leskovec, Computer Science, PhD
π₯this lecture, focus on deep generative models for graphs. We outline 2 types of tasks within the problem of graph generation: (1) realistic graph generation, where the goal is to generate graphs that are similar to a given set of graphs; (2) goal-directed graph generation, where we want to generate graphs that optimize given objectives/constraints. First, we recap the basics for generative models and deep generative models; then, in next parts introduce and focus on GraphRNN, one of the first deep generative models for graph; and finally, discuss GCPN, a deep graph generative model designed specifically for application to molecule generation.
π½ Watch: part1 part2 part3 part4
π²Channel: @ComplexNetworkAnalysis
#video #course #Graph #Machine_Learning #GCPN #GraphRNN #DGNN #GNN
YouTube
Stanford CS224W: ML with Graphs | 2021 | Lecture 15.1 - Deep Generative Models for Graphs
For more information about Stanfordβs Artificial Intelligence professional and graduate programs, visit: https://stanford.io/3Ex8TsH
Jure Leskovec
Computer Science, PhD
In this lecture, we focus on deep generative models for graphs. We outline 2 types ofβ¦
Jure Leskovec
Computer Science, PhD
In this lecture, we focus on deep generative models for graphs. We outline 2 types ofβ¦
π3π1
π application of machine learning in traffic optimization
π₯Free recorded course by Powel gora
π½ Watch
π²Channel: @ComplexNetworkAnalysis
#video #course #Graph #Machine_Learning
π₯Free recorded course by Powel gora
π½ Watch
π²Channel: @ComplexNetworkAnalysis
#video #course #Graph #Machine_Learning
YouTube
PaweΕ Gora: Applications of machine learning in traffic optimization
I will be talking about possible applications of machine learning in traffic optimization (and in optimizing some other complex processes). I will describe the process of building traffic metamodels by approximating outcomes of traffic simulations using machineβ¦
π4
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¦
π5β€1
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
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
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
πΉ Graph Embedding For Machine Learning in Python
π₯In this video, you will learn how to embed graphs into n-dimensional space to use them for machine learning.
π Watch
π²Channel: @ComplexNetworkAnalysis
#video #Graph_Embedding #Machine_Learning
π₯In this video, you will learn how to embed graphs into n-dimensional space to use them for machine learning.
π Watch
π²Channel: @ComplexNetworkAnalysis
#video #Graph_Embedding #Machine_Learning
YouTube
Graph Embedding For Machine Learning in Python
In this video, we learn how to embed graphs into n-dimensional space to use them for machine learning.
DeepWalk Paper: https://arxiv.org/abs/1403.6652
βΎβΎβΎβΎβΎβΎβΎβΎβΎβΎβΎβΎβΎβΎβΎβΎβΎ
π Programming Books & Merch π
π The Python Bible Book: https://www.neuralnine.com/books/β¦
DeepWalk Paper: https://arxiv.org/abs/1403.6652
βΎβΎβΎβΎβΎβΎβΎβΎβΎβΎβΎβΎβΎβΎβΎβΎβΎ
π Programming Books & Merch π
π The Python Bible Book: https://www.neuralnine.com/books/β¦
π5
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 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: http://web.stanford.edu/class/cs224w/
Series schedule:
Introduction; Machine Learning for Graphs
Traditionalβ¦
Series schedule:
Introduction; Machine Learning for Graphs
Traditionalβ¦
π3π2
πGraph-Based Data Science, Machine Learning, and AI
π₯Technical Paper
π Study
π²Channel: @ComplexNetworkAnalysis
#paper #Graph #AI #Data_Science #Machine_Learning
π₯Technical Paper
π Study
π²Channel: @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 β learn more in The Year of the Graph Newsletter's Spring 2021 edition.
β€3π2
π Machine Learning with Graphs: Graph Neural Networks in Computational Biology
π₯Free recorded course by Prof. Marinka Zitnik
π₯In this lecture, Prof. Marinka gives an overview of why graph learning techniques can greatly help with computational biology research. Concretely, this talk covers 3 exemplar use cases: (1) Discovering safe drug-drug combinations via multi-relational link prediction on heterogenous knowledge graphs; (2) Classify patient outcomes and diseases via learning subgraph embeddings; and (3) Learning effective disease treatments through few-shot learning for graphs.
π½ Watch
π²Channel: @ComplexNetworkAnalysis
#video #course #Graph #GNN #Machine_Learning #computational_biology
π₯Free recorded course by Prof. Marinka Zitnik
π₯In this lecture, Prof. Marinka gives an overview of why graph learning techniques can greatly help with computational biology research. Concretely, this talk covers 3 exemplar use cases: (1) Discovering safe drug-drug combinations via multi-relational link prediction on heterogenous knowledge graphs; (2) Classify patient outcomes and diseases via learning subgraph embeddings; and (3) Learning effective disease treatments through few-shot learning for graphs.
π½ Watch
π²Channel: @ComplexNetworkAnalysis
#video #course #Graph #GNN #Machine_Learning #computational_biology
YouTube
Stanford CS224W: Machine Learning with Graphs | 2021 | Lecture 18 - GNNs in Computational Biology
For more information about Stanfordβs Artificial Intelligence professional and graduate programs, visit: https://stanford.io/2XVImFC
Lecture 18 - Graph Neural Networks in Computational Biology
Jure Leskovec
Computer Science, PhD
We are glad to invite Prof.β¦
Lecture 18 - Graph Neural Networks in Computational Biology
Jure Leskovec
Computer Science, PhD
We are glad to invite Prof.β¦
π4π1
π Machine Learning with Graphs: Pre-Training Graph Neural Networks
π₯Free recorded course by Prof. Jure Leskovec
π₯There are two challenges in applying GNNs to scientific domains: scarcity of labeled data and out-of-distribution prediction. In this video we discuss methods for pre-training GNNs to resolve these challenges. The key idea is to pre-train both node and graph embeddings, which leads to significant performance gains on downstream tasks.
π½ Watch
πMore details can be found in the paper: Strategies for Pre-training Graph Neural Networks
π²Channel: @ComplexNetworkAnalysis
#video #course #Graph #GNN #Machine_Learning
π₯Free recorded course by Prof. Jure Leskovec
π₯There are two challenges in applying GNNs to scientific domains: scarcity of labeled data and out-of-distribution prediction. In this video we discuss methods for pre-training GNNs to resolve these challenges. The key idea is to pre-train both node and graph embeddings, which leads to significant performance gains on downstream tasks.
π½ Watch
πMore details can be found in the paper: Strategies for Pre-training Graph Neural Networks
π²Channel: @ComplexNetworkAnalysis
#video #course #Graph #GNN #Machine_Learning
arXiv.org
Strategies for Pre-training Graph Neural Networks
Many applications of machine learning require a model to make accurate pre-dictions on test examples that are distributionally different from training ones, while task-specific labels are scarce...
π4β€1
π A Survey on Machine Learning Solutions for Graph Pattern Extraction
π Publish year: 2022
π§βπ»Authors:Kai Siong Yow, Ningyi Liao, Siqiang Luo, Reynold Cheng, Chenhao Ma, Xiaolin Han
π’University: g, Nanyang Technological University
πΊ China, Singapore
π Study the paper
π²Channel: @ComplexNetworkAnalysis
#paper #Survey #Machine_learning #Pattern
π Publish year: 2022
π§βπ»Authors:Kai Siong Yow, Ningyi Liao, Siqiang Luo, Reynold Cheng, Chenhao Ma, Xiaolin Han
π’University: g, Nanyang Technological University
πΊ China, Singapore
π Study the paper
π²Channel: @ComplexNetworkAnalysis
#paper #Survey #Machine_learning #Pattern
π2π2
π Machine Learning for Graph Algorithms and Representations
πA Thesis Submitted to the Faculty in partial fulfillment of the requirements for the degree of Doctor of Philosophy in Engineering Sciences
πPublish year: 2024
π§βπ»Author: Allison Mann
π’University: College Hanover, New Hampshire
πStudy Thesis
π±Channel: @ComplexNetworkAnalysis
#Thesis #Machine_Learning #Algorithms #Representations
πA Thesis Submitted to the Faculty in partial fulfillment of the requirements for the degree of Doctor of Philosophy in Engineering Sciences
πPublish year: 2024
π§βπ»Author: Allison Mann
π’University: College Hanover, New Hampshire
πStudy Thesis
π±Channel: @ComplexNetworkAnalysis
#Thesis #Machine_Learning #Algorithms #Representations
π1
πCommunity detection in social networks using machine learning: a systematic mapping study
π Publish year: 2024
πJournal: Knowledge and Information Systems (I.F=2.5)
π§βπ»Authors: Mahsa Nooribakhsh, Marta FernΓ‘ndez-Diego, Fernando GonzΓ‘lez-LadrΓ³n-De-Guevara. Mahdi Mollamotalebi
π’University: Universitat PolitΓ¨cnica de ValΓ¨ncia, Camino de Vera, s/n, 46022, Valencia, Spain and Islamic Azad University, Qazvin, Iran
π Study paper
π±Channel: @ComplexNetworkAnalysis
#paper #Community_detection #Machine_learning #mapping
π Publish year: 2024
πJournal: Knowledge and Information Systems (I.F=2.5)
π§βπ»Authors: Mahsa Nooribakhsh, Marta FernΓ‘ndez-Diego, Fernando GonzΓ‘lez-LadrΓ³n-De-Guevara. Mahdi Mollamotalebi
π’University: Universitat PolitΓ¨cnica de ValΓ¨ncia, Camino de Vera, s/n, 46022, Valencia, Spain and Islamic Azad University, Qazvin, Iran
π Study paper
π±Channel: @ComplexNetworkAnalysis
#paper #Community_detection #Machine_learning #mapping
πGraph Data Science and machine learning applications
πMaster Degree Thesis by Antonella Cardillo form POLITECNICO DI TORINO
πPublish year: 2024
π Study thesis
π²Channel: @ComplexNetworkAnalysis
#thesis #Graph #machine_learning #Data_Science
πMaster Degree Thesis by Antonella Cardillo form POLITECNICO DI TORINO
πPublish year: 2024
π Study thesis
π²Channel: @ComplexNetworkAnalysis
#thesis #Graph #machine_learning #Data_Science
π2π―1
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