LLM’s Closing the KG Gap
GraphNews
consider how you can effectively use JSON-LD as the foundation of your data architecture
In today's data-driven world, it is crucial to establish a clear boundary between your public and private data. Whilst banks, medical institutions, and spy… | 35 comments on LinkedIn
Building and maintaining the skills taxonomy that powers LinkedIn's Skills Graph
Co-authors: Sofus Macskássy, Carol Jin, Shiyong Lin, Xiaomin Wei, and Michael O’Neill
The Great Graph Database Debate • The Register
Two experts go head-to-head – then you decide
Graph Neural Networks Go Forward-Forward
We present the Graph Forward-Forward (GFF) algorithm, an extension of the
Forward-Forward procedure to graphs, able to handle features distributed over a
graph's nodes. This allows training graph neural networks with forward passes
only, without backpropagation. Our method is agnostic to the message-passing
scheme, and provides a more biologically plausible learning scheme than
backpropagation, while also carrying computational advantages. With GFF, graph
neural networks are trained greedily layer by layer, using both positive and
negative samples. We run experiments on 11 standard graph property prediction
tasks, showing how GFF provides an effective alternative to backpropagation for
training graph neural networks. This shows in particular that this procedure is
remarkably efficient in spite of combining the per-layer training with the
locality of the processing in a GNN.
TigerGraph Introduces Powerful New Capabilities to Streamline the Adoption of Graph Technology
TigerGraph, provider of an advanced analytics and ML platform for connected data, is releasing the latest version (3.9) of TigerGraph Cloud, the native parallel graph database-as-a-service. TigerGraph Cloud 3.9 includes new security, advanced AI, and machine learning capabilities that meet the demands of its rapidly growing customer base and streamline the adoption, deployment, and management of the most scalable graph database platform, according to the company. The underlying parallel native graph database engine is also available for on-prem or self-managed cloud installation.
Teaching old labels new tricks in heterogeneous graphs
Why should you combine ChatGPT with Knowledge Graphs?
AI-chatbot software for complex requirements
JSON-LD
If you're thinking about building Data Products in your organisation then you need to know about JSON-LD! JSON-LD, short for JavaScript Object Notation for… | 27 comments on LinkedIn
Towards Geometric Deep Learning
Geometric Deep Learning is a term for approaches considering ML problems from the perspectives of symmetry and invariance. It provides a common blueprint for CNNs, GNNs, and Transformers. Here, we study the history of GDL from ancient Greek geometry to Graph Neural Networks.
Automatic Knowledge Graphs: The Impossible Grail
As promised by many analysts, the automatic creation of knowledge graphs should have allowed us to reach the Holy Grail of knowledge…
Ontology? What’s that?
It can be hard to work out from Wikipedia if an Ontologist is a philosopher, a physicist or something completely different
Top 5 use cases for graph databases
Graph databases are finding new use cases in sales, ecommerce, healthcare, financial services, fraud detection and much more.
Knowledge graphs as tools for explainable machine learning: A survey
This paper provides an extensive overview of the use of knowledge graphs in the context of Explainable Machine Learning. As of late, explainable AI ha…
Taxonomies vs. Ontologies
Topics related to information management taxonomies posted by the author of the book, The Accidental Taxonomist.
Digital Science acquires knowledge graph and decision intelligence software company metaphacts - Digital Science
Digital Science has completed the acquisition of metaphacts, which has become the newest member of the Digital Science family.
Semantic Technology Helps Manage Any Industry’s Complex Knowledge: An Interview with Ontotext’s CEO Atanas Kiryakov
SeeNews talks to Ontotext’s CEO Atanas Kiryakov about the latest developments in semantic technology and graph technology as well as GraphDB
Everything is Connected: Graph Neural Networks
In many ways, graphs are the main modality of data we receive from nature.
This is due to the fact that most of the patterns we see, both in natural and
artificial systems, are elegantly...
Create Neo4j Database Model with ChatGTP
Proper modeling of a graph database can be challenging. Let’s check how ChatGPT will perform with a semi-real case.
Graph ML in 2023: The State of Affairs
Hot trends and major advancements
Temporal Graph Learning in 2023
The story so far
ByteGraph: A Graph Database for TikTok
Introduction to Graph Machine Learning
We’re on a journey to advance and democratize artificial intelligence through open source and open science.
How to easily build your own domain specific knowledge graph
Using open data to make your own graph…
Luca Cappelletti on LinkedIn: #knowledgegraph #qualitycontrol #graph #machinelearning
🔎🔬🔍 Improve your knowledge graph with GRAPE! 🦟🦠🪲 You may not be aware, but KGs can have topological oddities affecting your analysis and modelling…
Integrating Siloed Personal Knowledge Graphs
Critical steps in improving the productivity of enterprise note-taking
Knowledge Graph Costs
Knowledge Graph Costs I just finished my primary research for a new paper on the costs and obstacles of adopting knowledge graph. The three themes that… | 10 comments on LinkedIn
Denise Gosnell, Ph.D. on LinkedIn: Amazon Neptune Engine Version 1.2.0.2 (2022-11-20)
To use this feature, you just need to add 'with("Neptune#ml.inductiveInference")' to your Gremlin query with Amazon Neptune. Happy graphing, folks!...
What’s New in RDFox v6.0? High Availability, Enhanced Named Graph Support, and so much more! | Oxford Semantic Technologies | 6 min read | Nov 29, 2022
RDFox v6.0 is here and it’s a big one! This release is landmarked by ground-breaking features including the new high availability setup and a total reimagining of the handling of named graphs. These features alone offer the opportunity for truly cutting-edge solutions, but when combined with the myriad of other improvements and the blistering capabilities of RDFox already in place, they allow you to step ahead of the curve. | 6 min read | Nov 29, 2022
Denoising Diffusion Generative Models in Graph ML
Is Denoising Diffusion all you need?