GraphNews

3951 bookmarks
Custom sorting
Malware Knowledge Graph Generation
Malware Knowledge Graph Generation
Cyber threat and attack intelligence information are available in non-standard format from heterogeneous sources. Comprehending them and utilizing them for threat intelligence extraction requires...
·t.co·
Malware Knowledge Graph Generation
WikiResearch on Twitter
WikiResearch on Twitter
"OntoEnricher: A Deep Learning Approach for Ontology Enrichment from Unstructured Text" - Bidirectional LSTMs trained on a large #DBpedia and #Wikipedia corpuses to enrich information security ontologies.(Mohan et al, 2021)https://t.co/5ZTYWrDSnu pic.twitter.com/z5XeiaTAf0— WikiResearch (@WikiResearch) February 15, 2021
·twitter.com·
WikiResearch on Twitter
Mosaic Knowledge Graphs
Mosaic Knowledge Graphs
Demo of COMeT, a knowledge base construction engine that learns to produce new nodes and connections in commonsense knowledge graphs, on ATOMIC and ConceptNet.
·t.co·
Mosaic Knowledge Graphs
Aaron Bradley on Twitter
Aaron Bradley on Twitter
"Digital Twins Definition Language is an open modeling language based on JSON-LD and RDF, by which developers can define the schema of the entities they expect to use in their graphs or topologies." This is an "open-source DTDL-based ontology .. for the real estate industry" https://t.co/icnwlMB5qy pic.twitter.com/at2kos9CDK— Aaron Bradley (@aaranged) February 16, 2021
·twitter.com·
Aaron Bradley on Twitter
Personalized Visualization Recommendation
Personalized Visualization Recommendation
Visualization recommendation work has focused solely on scoring visualizations based on the underlying dataset and not the actual user and their past visualization feedback. These systems...
·t.co·
Personalized Visualization Recommendation
Visual Ontology Modeling for Domain Experts and Business Users with metaphactory
Visual Ontology Modeling for Domain Experts and Business Users with metaphactory
This blog post will give you an overview of what we have developed in customer projects over the years as our game plan to build a Knowledge Graph-driven, FAIR Data platform and drive digital transformation with data. The post will show you how our product metaphactory can support you every step of the way, and will highlight examples from the life sciences and pharma domains.
·blog.metaphacts.com·
Visual Ontology Modeling for Domain Experts and Business Users with metaphactory
Charly Wargnier on Twitter
Charly Wargnier on Twitter
Introducing Wiki Topic Grapher! 👾🐍🔥Leverage the power of Google #NLP to retrieve entity relationships from Wikipedia URLs or topics! + Get interactive graphs of connected entities+ Export results w/ ent. types+salience to CSV!▶️https://t.co/9M0zaMNIX8h/t @Streamlit 🧵 pic.twitter.com/ok9M3ypQgr— Charly Wargnier (@DataChaz) February 19, 2021
·twitter.com·
Charly Wargnier on Twitter
I4OC on Twitter: "We applaud today’s decision by the American Chemical Society to endorse @DORAssessment and to make citation data for all their journals openly available. One more major publisher supporting the vision of unrestricted access to scholarly citation data 🚀" / Twitter
I4OC on Twitter: "We applaud today’s decision by the American Chemical Society to endorse @DORAssessment and to make citation data for all their journals openly available. One more major publisher supporting the vision of unrestricted access to scholarly citation data 🚀" / Twitter
We applaud today’s decision by the American Chemical Society to endorse @DORAssessment and to make citation data for all their journals openly available. One more major publisher supporting the vision of unrestricted access to scholarly citation data 🚀 https://t.co/VNMwefVEbX— I4OC (@i4oc_org) February 18, 2021
·twitter.com·
I4OC on Twitter: "We applaud today’s decision by the American Chemical Society to endorse @DORAssessment and to make citation data for all their journals openly available. One more major publisher supporting the vision of unrestricted access to scholarly citation data 🚀" / Twitter
Neo4j on Twitter
Neo4j on Twitter
Our #Neo4j sandbox infrastructure got a big update. And with this there are all new versions of Neo4j, APOC, Graph Data Science, Bloom and Neosemantics available for you to learn and explore. Enjoy the new sandboxes and let us know what you think.https://t.co/HVLpAtVQ2y— Neo4j (@neo4j) February 19, 2021
·t.co·
Neo4j on Twitter
Bot do Laboratório de Humanidades Digitais da UFBA on Twitter
Bot do Laboratório de Humanidades Digitais da UFBA on Twitter
Check out Marinella Testori's brand new post featuring Carriero et al.'s preprint: ARCO: The Italian Cultural Heritage Knowledge Graphhttps://t.co/qALUUZgtBe#LinkedOpenData #DigitalHumanities #KnowledgeGraphs pic.twitter.com/UQNSXGAnc2— OpenMethods (@openmethods_dh) March 12, 2021
·twitter.com·
Bot do Laboratório de Humanidades Digitais da UFBA on Twitter
Petar Veličković on Twitter
Petar Veličković on Twitter
If you're interested in GNNs for combinatorial tasks (certainly an exciting time!), we've released our 43-page comprehensive survey on the area! + detailed blueprint of algorithmic reasoning in S3.3.https://t.co/F4TG4svKMGwith @chrsmrrs @69alodi @lyeskhalil @qcappart & Didier pic.twitter.com/P6TANTgLvr— Petar Veličković (@PetarV_93) February 19, 2021
·twitter.com·
Petar Veličković on Twitter
Neo4j on Twitter
Neo4j on Twitter
THREAD - how you can do crazy cool things with @Neo4j and Graph Data Science (GDS). This thread is going to be a walk-through example of what you can do, and how you can even found a startup on the back of this stuff.First, some background on my data: pic.twitter.com/aT6enmV5SC— 𝔻𝕒𝕧𝕚𝕕 𝔸𝕝𝕝𝕖𝕟 (@mdavidallen) February 23, 2021
·twitter.com·
Neo4j on Twitter
WikiCite on Twitter
WikiCite on Twitter
We’re thrilled to share a proposal to extend the work of the #WikiCite community, to support Wikimedia Projects and make citations: • easier for the editor,• more useful for the reader,• and more efficient for our architecture.#SharedCitationshttps://t.co/pqVwQLApNa 1/ pic.twitter.com/oALIPg7JTD— WikiCite (@Wikicite) February 22, 2021
·twitter.com·
WikiCite on Twitter
E(n) Equivariant Graph Neural Networks
E(n) Equivariant Graph Neural Networks
This paper introduces a new model to learn graph neural networks equivariant to rotations, translations, reflections and permutations called E(n)-Equivariant Graph Neural Networks (EGNNs). In...
·t.co·
E(n) Equivariant Graph Neural Networks
The LLVM Project Blog
The LLVM Project Blog
The code property graph (CPG) is a data structure designed to mine large codebases for instances of programming patterns via a domain-specific query language. It was first introduced in the proceedings of the IEEE Security and Privacy conference in 2014 (publication, PDF) in the context of vulnerability discovery in C system code and the Linux kernel in particular.
·blog.llvm.org·
The LLVM Project Blog
aws/graph-notebook
aws/graph-notebook
Library extending Jupyter notebooks to integrate with Apache TinkerPop and RDF SPARQL. - aws/graph-notebook
·t.co·
aws/graph-notebook