TigerGraph Unveils Free TigerGraph Enterprise Edition, Helping Companies Use Graph as the Foundation of Many Modern Data, Analytics and AI Capabilities
2 Megatrends Dominate the Gartner Hype Cycle for Artificial Intelligence, 2020
While five new #AI solutions enter the Gartner Hype Cycle for AI, 2020 what trends are dominating this year’s #AI landscape? Read Gartner analyst Svetlana Sicular’s views here. #GartnerSYM #CIO #ML #Chatbot
Converting text documents into knowledge graphs with the Diffbot Natural Language API
Most of the world’s knowledge is encoded in natural language (e.g., news articles, books, emails, academic papers). It is estimated that 80 percent of business-relevant information originates in un…
The Covid-19 SQL knowledge graph. Making the worlds Covid-19 data accessible and easy to explore.
Introduction to timbr and the Covid-19 SQL knowledge graph
The Covid-19 SQL knowledge graph. Making the worlds Covid-19 data accessible and easy to explore.
Introduction to timbr and the Covid-19 SQL knowledge graph
When Data visualization and Art Collide With the Humble Org Chart
Diving into the bowels of a global organization
https://www.linkedin.com/pulse/from-neo4j-graph-virtual-reality-concept-map-alessio-sperlinga
Linking Entities with Knowledge Graphs
An overview of how Strise tackle the Entity Linking problem.
𝖱uud Steltenp∞l ❤️🤔🔗📊,💾🌳,🚲🌍,👨👩👧👧 on Twitter
Adrian Suciu on Twitter
Happy to announce that my @OReillyMedia book Semantic Modeling for Data is now published https://t.co/4yngwDPMrO and available in electronic and print format https://t.co/VsFc8zf2KY. Get a free sample chapter at https://t.co/DivwADNUGo #datascience #datamodeling #knowledgegraphs pic.twitter.com/9j58IF1lcZ— Panos Alexopoulos (@PAlexop) September 9, 2020
DeepWalk: Its Behavior and How to Implement It
A cheat sheet for quickly analyzing and evaluating relationships in graph networks using Python, Networkx, and Gensim
Graph Analytics with py2neo
Using neo4j’s power for scalable graph analytics in Python
Machine Learning Tasks on Graphs
Can We Divide It Into Supervised/Unsupervised Learning? It’s Not That Simple…
Commonsense Knowledge in Wikidata
Wikidata and Wikipedia have been proven useful for reason-ing in natural language applications, like question answering or entitylinking. Yet, no existing work has studied the potential of...
How to build a recommendation system in a graph database using a latent factor model
In-database training avoids exporting the data from the DBMS to other machine learning platforms thus better support continuous model…
The Open World Assumption Considered Harmful
A frequent source of confusion with ontologies and more generally with any kind of information system is the Open World Assumption. This trips up novice inexperienced users, but as I will argue in …
Edge properties, part 1: Reification
What is going on with all those note-taking apps?
In Deliberate Internet 27 I focus on the new wave of note-taking apps and explain why they are all sprouting now.
W3C LBD CG meets … – Selected Topics on Linked Data, Semantic Web and Graph Technologies in the Built Environment
Semantic Knowledge Graphing Market Analysis and Forecast 2020: By Keyplayers Google Inc., metaphacts GmbH, Stardog Union, Grakn Labs, Microsoft Corporation, LinkedIn, Semantic Web Company, Baidu, Yandex, Wolfram Alpha, and Ontotext.
Don t Quarantine Your Research you keep your social distance and we provide you a social DISCOUNT use QUARANTINEDAYS Code in precise requirement and Get FLAT 1000USD OFF on all CMI reports The Knowledge Graph can be defined as the ...
More is not Always Better: The Negative Impact of A-box...
RDF2vec is an embedding technique for representing knowledge graph entities in a continuous vector space. In this paper, we investigate the effect of materializing implicit A-box axioms induced by...
Neosemantics: A Linked Data Toolkit for Neo4j
Discover the endless possibilities of the NSMNTX plugin on RDF data, linked data and more with Neo4j Engineering Director Jesús Barrasa.
All About Knowledge Graphs for Actions
Current action recognition systems require large amounts of training data for recognizing an action. Recent works have explored the paradigm of zero-shot and few-shot learning to learn classifiers...
GOSH: Embedding Big Graphs on Small Hardware
In graph embedding, the connectivity information of a graph is used to represent each vertex as a point in a d-dimensional space. Unlike the original, irregular structural information, such a...
Architectural Implications of Graph Neural Networks
Graph neural networks (GNN) represent an emerging line of deep learning models that operate on graph structures. It is becoming more and more popular due to its high accuracy achieved in many...
Graph Embedding with Data Uncertainty
spectral-based subspace learning is a common data preprocessing step in many machine learning pipelines. The main aim is to learn a meaningful low dimensional embedding of the data. However, most...
Text Generation from Knowledge Graphs with Graph Transformers
Top 10 Learning Resources for Graph Neural Networks
A Visual Guide to Graph Neural Network
Everything you need to know to start working with GNN
Spatial Data: Graph-Spectrum as Features
A nice, easy way to enrich your spatial data with features from Graph Theory which capture information that is hard to encode otherwise.