Great job to Prasun Gera for presenting our joint research on Traversing Large #Graphs on #GPUs with Unified Memory, with Hyojong Kim, @piyusch, & Hyesoon Kim, in virtual Tokyo @VLDB2020 #DataScience @NJIT @NJITYingWu https://t.co/J7V4K94VSF pic.twitter.com/LjsrKrqHJY— David Bader (@Prof_DavidBader) September 7, 2020
We got this year's @AmazonScience AWS ML Award for our work with @befcorreia on #protein design using #geometricdeeplearning Will help to take #masif to the next level https://t.co/Ec7t2g7nqV pic.twitter.com/OrHGwHp1cE— Michael Bronstein (@mmbronstein) September 9, 2020
"PNEL: Pointer Network based End-To-End Entity Linking over Knowledge Graphs." with an evaluation over three datasets on the #Wikidata Knowledge Graph.(@debayan Banerjee et al, 2020)https://t.co/cTCq4EhrGP pic.twitter.com/Ci1yn2CPDp— WikiResearch (@WikiResearch) September 8, 2020
Some good progress happening on the RDF* mailing list, towards a de-facto standard for representing statements about statements in a user-friendly syntax. See whole thread for context if interested https://t.co/S6N9w3XLH7— Holger Knublauch (@HolgerKnublauch) September 7, 2020
(1/5) Thank you everyone who came to Graph-n-Code livestreams with @SonicDMG and I. 🙏This thread has all the links you need for FREE access to:📌 The code📌 The Images📌 The bookWe are cooking up more livestreams; stay tuned! pic.twitter.com/QFbvdSiAO9— Denise Gosnell, PhD (@DeniseKGosnell) September 8, 2020
"We propose Factual News Graph (FANG), a novel graphical social context representation and learning framework for fake news detection" > FANG: Leveraging Social Context for Fake News Detection Using Graph Representation @ngnvnhng et al. https://t.co/mTJDQW9bYo pic.twitter.com/vVeYFToMN9— Aaron Bradley (@aaranged) September 8, 2020
SPEX introspects knowledge graphs in SPARQL endpoints, using RDF's self-describing nature to give a better understanding of its schema. Once the schema is available, SPEX can be used to browse instances of this data and follow links to other data. https://t.co/B0WTz6zsQT— Tim Finin (@timFinin) August 24, 2020
Very cool: a new Knowledge Graph Search tool by @maxxeight & @MerkleAllows you to:• View entities associated with a query• Extract Knowledge Graph IDs• See scoring for different results+ preview the SERP (favourite feature)Test + bookmark here: https://t.co/WcCENJNG11 pic.twitter.com/KokprslthX— Brodie Clark (@brodieseo) September 10, 2020
Can we use #graphneuralnetworks when the graph is not given? In a new blog post I show that a new type of "latent graph learning" architectures can be thought of as a modern take on #manifoldlearninghttps://t.co/p40Sod9EOr pic.twitter.com/jw7RsKuiMi— Michael Bronstein (@mmbronstein) September 10, 2020
Just added >11M #OpenCitations to #COCI, for an overall amount of >733M citations currently available in our dataset – it can be queried via #REST API & #SPARQL endpoint and can be fully downloaded as a dump (available on #Figshare)+info at https://t.co/nxSlZGkb3G #OpenScience pic.twitter.com/FZhHYN782y— OpenCitations (@opencitations) September 7, 2020
Water networks are graphs. And, if poorly designed, vulnerable. Storing their topology in a #graphdatabase helps identifying components & weaknesses. This @graphileon demo was built on top of #neo4j, without writing any code. #lowcoding #YourAppIsAGraphhttps://t.co/2WW3YCRQwF pic.twitter.com/bJ9pYjRTkt— Graphileon (@graphileon) September 12, 2020
In this week's #twin4j, @adamcowley hows us how to build a Knowledge Graph from our Slack archiveshttps://t.co/isibvvCAZ0#neo4j pic.twitter.com/BCm6o0fcNd— Neo4j (@neo4j) September 12, 2020
Rule-Guided Graph Neural Networks for Recommender Systems https://t.co/Rt2TRzVllt pic.twitter.com/52A8tvKNz5— Aaron Bradley (@aaranged) September 10, 2020
"Pixie is one of Pinterest’s major recommendation systems used for fetching relevant Pins. Pixie is composed of a bipartite graph of all Pins and boards on Pinterest." https://t.co/Ng5PszF07x— Aaron Bradley (@aaranged) September 11, 2020
"In RDF, properties cannot be directly associated with edges. How would we represent something like [an LPG labeled edge] in RDF? In fact there are multiple ways of modeling this. A common approach is reification." @chrismungall https://t.co/0MQxFomSvX— Aaron Bradley (@aaranged) September 11, 2020
GeoSPARQL+: Syntax, Semantics and System for Integrated Querying of Graph, Raster and Vector Data - Technical Report / @situxxx, @ststaab, Daniel Janke https://t.co/qrsPikb9U0 pic.twitter.com/dQ7qdzP26O— Aaron Bradley (@aaranged) September 11, 2020
Using Graph Convolutional Networks and TD(λ) to play the game of Risk https://t.co/Js0tUctECl pic.twitter.com/9EgI7hZa3d— Aaron Bradley (@aaranged) September 15, 2020
Speaking of personalized knowledge graphs....Knowledge Graphs to Empower Humanity-inspired AI Systems @hemant_pt, Valerie Shalin, @amit_p https://t.co/7gYiAxNHhU pic.twitter.com/bVccm8IxCK— Aaron Bradley (@aaranged) September 16, 2020
Tax Knowledge Graph for a Smarter and More Personalized TurboTax @jiebingyu et al. of @Intuit https://t.co/XZP9afAU34 pic.twitter.com/iYAcCVmmVn— Aaron Bradley (@aaranged) September 15, 2020
@davidebus is delivering a brilliant keynote at DeepOntoNLP (https://t.co/XYE99QzEgB) about of role of #NLP and #DeepLearning in the generation of the #Artificial #Intelligence #KnowledgeGraph (AI-KG, https://t.co/rH7MgH7e89) from research publications. pic.twitter.com/SkWhpx6IUg— Francesco Osborne (@FraOsborne) September 16, 2020
Traditional KGs are based on triples, whereas new KGs like #wikidata use statements and qualifiers to instantiate each edge further making the graph hyper-relational (img1). We incorporate these qualifiers by modifying existing multi-relational GNN (CompGCN) in the StarE (img 2). pic.twitter.com/Qs2xYZEDQy— Michael Galkin (@michael_galkin) September 15, 2020
#kdd2020 Very excited to share our work on Continuous-time Graph Neural Network: "Neural Dynamics on Complex Networks" soon in the KDD2020 research track with @feiwang03 @WCMPopHealthSci @WeillCornell @kdd_news Arxiv: https://t.co/nfaLr94aPkA learned network dynamics of genes pic.twitter.com/I9FwP7wkqz— Chengxi Zang (@calvin_zcx) August 27, 2020
A new post coauthored with Kirill Veselkov and Gabriella Sbordone on the use of #graphml for discovering #cancer-beating molecules in #food and the concept of #hyperfoods based on our Scientific Reports paper @KitchenTheory @Jozef_Youssef @VodafoneFdn https://t.co/rsZzMH8kpK pic.twitter.com/OJBgiqfrDV— Michael Bronstein (@mmbronstein) September 15, 2020
CODO: An Ontology for Collection and Analysis of Covid-19 Data https://t.co/qKt4WJowzE pic.twitter.com/rTsdqJrqh1— Aaron Bradley (@aaranged) September 14, 2020
"How might a web application work if it exclusively uses Linked Data (RDF) to communicate between server and client?" @joepmeindertsma https://t.co/BJa13ERMo7— Aaron Bradley (@aaranged) September 14, 2020
It was a pleasure to present "Challenges of Linking Organizational Information in Open Government Data to Knowledge Graphs" (joint work w/ @OmaimaAF @sebneum @iamYaserJ @AxelPolleres) today at #EKAW :) Preprint: https://t.co/Q7ot16bRMa#BOSK #EKAW2020 #knowledgegraphs pic.twitter.com/oYYVoC7fVk— Jan Portisch (@JanPortisch) September 18, 2020
This "Load balance graph queries using the Amazon Neptune Gremlin Client" blog post is a nice body of work covering a more advanced topic than is typically seen in the TinkerPop community. https://t.co/4mJVRxENwL #graphdb pic.twitter.com/d94tOwUaQB— stephen mallette (@spmallette) September 17, 2020
This year we organize Graph ML track at Data Fest 2020. It's like a workshop at the conference, but more informal. We will have videos from amazing speakers and also networking, where you can talk to me, speakers, or other people who are interested in graph machine learning. pic.twitter.com/kTrJsc7ca2— Sergey Ivanov (@SergeyI49013776) September 17, 2020