TGINSIGHT CHAT
Graph Machine Learning
@graphml
TechnologiesEverything about graph theory, computer science, machine learning, etc. If you have something worth sharing with the community, reach out @gimmeblues, @chaitjo. Admins: Sergey Ivanov; Michael Galkin; Chaitanya K. Joshi
Posts récents
Page 27 sur 74 · 877 posts
Publié 31 août
Fresh picks from ArXiv This week on ArXiv: predictions of routing times, benchmarking architecture tricks, and drug repurposing study 💊 If I forgot to mention your paper, please shoot me a message and I will update the post. Conferences * Single Node Injection Attack against Graph Neural Networks CIKM 2021 * ETA Prediction with Graph Neural Networks in Google Maps CIKM 2021, with Petar Veličković * Tree Decomposed Graph Neural Network CIKM 2021, with Tyler Derr * DSKReG: Differentiable Sampling on Knowledge Graph for Recommendation with Relational GNN CIKM 2021 * Multiplex Graph Neural Network for Extractive Text Summarization EMNLP 2021 * Demystifying Drug Repurposing Domain Comprehension with Knowledge Graph Embedding IEEE BioCAS 2021 * DC-GNet: Deep Mesh Relation Capturing Graph Convolution Network for 3D Human Shape Reconstruction ACM MM'21 * Visualizing JIT Compiler Graphs GD 2021 GNNs * Spatio-Temporal Graph Contrastive Learning Benchmark * Weisfeiler-Leman in the BAMBOO: Novel AMR Graph Metrics and a Benchmark for AMR Graph Similarity TACL 2021 * Bag of Tricks for Training Deeper Graph Neural Networks: A Comprehensive Benchmark Study Math * Smallest graphs with given automorphism group
Publié 26 août
Graph Drawing and Network Visualization 2021 A symposium on graph Drawing and network visualization is a nice niche conference on how to draw graphs efficiently and insightfully. This year it will be organized both online and offline (in Tübingen, Germany). Dates are: September 14-17, 2021. Accepted papers can be seen here.
Publié 25 août
Video: Graph Neural Networks - a perspective from the ground up A beautiful video about GNNs aimed at CS undergrads that explains what message passing and node embeddings are and gives a link prediction example.
Publié 24 août
Fresh picks from ArXiv This week on ArXiv: GNNs for lidars, complex reasoning in knowledge graphs, and building AI for drawing graphs 🤖 If I forgot to mention your paper, please shoot me a message and I will update the post. GNNs * Generative and Contrastive Self-Supervised Learning for Graph Anomaly Detection * TabGNN: Multiplex Graph Neural Network for Tabular Data Prediction * Learning to Match Features with Seeded Graph Matching Network * EqGNN: Equalized Node Opportunity in Graphs Applications * GP-S3Net: Graph-based Panoptic Sparse Semantic Segmentation Network * Adaptive Graph Convolution for Point Cloud Analysis * Hyperbolic Hypergraphs for Sequential Recommendation * Implementation of Sprouts: a graph drawing game Knowledge graphs * Fact-Tree Reasoning for N-ary Question Answering over Knowledge Graphs * UNIQORN: Unified Question Answering over RDF Knowledge Graphs and Natural Language Text
Publié 20 août
TorchDrug: a powerful and flexible machine learning platform for drug discovery Jian Tang and his co-workers from MILA open-sourced a new library TorchDrug on drug modeling with machine learning. It includes an easy interface for property prediction, pretrained molecular representations, de-novo molecule design & optimization, knowledge graph reasoning, and more.
Publié 19 août
Graph Machine Learning research groups:Ian Davidson I do a series of posts on the groups in graph research, previous post is here. The 33rd is Ian Davidson, a professor at UC Davis, who works in the areas with societal impacts such as neuroscience, intelligent tutoring systems and social networks. Ian Davidson (~1973) - Affiliation: UC Davis - Education: Ph.D. at Monash University in 2000 (advisor: C.S. Wallace) - h-index 44 - Interests: fairness, clustering, graphical models. - Awards: best papers at KDD, SIAM, ICDM
Publié 19 août
Book: Designing and Building Enterprise Knowledge Graphs (Synthesis Lectures on Data, Semantics, and Knowledge) A new book by Ora Lassila and Juan Sequeda that guides on designing and building knowledge graphs from enterprise relational databases in practice. It presents a principled framework centered on mapping patterns to connect relational databases with knowledge graphs, the roles within an organization responsible for the knowledge graph, and the process that combines data and people. The content of this book is applicable to knowledge graphs being built either with property graph or RDF graph technologies.
Publié 18 août
Awesome Efficient Graph Neural Networks A new awesome repo by Chaitanya K. Joshi with the curated list of must-read papers on efficient Graph Neural Networks and scalable Graph Representation Learning for real-world applications.
Publié 17 août
Fresh picks from ArXiv This week on ArXiv: PDE-inspired GNNs, proves to the conjectures, and a new benchmark for graph completion 🧵 If I forgot to mention your paper, please shoot me a message and I will update the post. GNNs * Distilling Holistic Knowledge with Graph Neural Networks ICCV 2021 * Fully Hyperbolic Graph Convolution Network for Recommendation CIKM 2021 * Jointly Attacking Graph Neural Network and its Explanations * LEO: Learning Energy-based Models in Graph Optimization * PDE-GCN: Novel Architectures for Graph Neural Networks Motivated by Partial Differential Equations * Shift-Robust GNNs: Overcoming the Limitations of Localized Graph Training data with Bryan Perozzi * AdaGNN: A multi-modal latent representation meta-learner for GNNs based on AdaBoosting Math * Isomorphisms between random graphs * Edge Partitions of Complete Geometric Graphs (Part 1) Survey * Are Missing Links Predictable? An Inferential Benchmark for Knowledge Graph Completion * Influence Maximization in Social Networks: A Survey of Behaviour-Aware Methods
Publié 9 août
GDL Course A course that follows closely the geometric deep learning book. It contains 12 lectures, 2 tutorials, and 4 seminars covering topics such as graphs, sets, grids, groups, geodesics, gauges, and time warping. Videos and slides are available.
Publié 6 août
Essays on Data Science A great collection of blog posts on machine learning and computer science covering topics such as infinitely wide neural nets, markov models, and graph deep learning.
Publié 5 août
Knowledge Graphs in Natural Language Processing @ ACL 2021 A regular update from Michael Galkin on the SOTA applications of KG in the world of words: Neural Databases & Retrieval KG-augmented Language Models KG Embeddings & Link Prediction Entity Alignment KG Construction, Entity Linking, Relation Extraction KGQA: Temporal, Conversational, and AMR.