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Knowledge Graph Benchmarking Report 2021
Knowledge Graph Benchmarking Report 2021
Knowledge technologies and semantic standards are changing the nature of data management – but the issues, obstacles and use cases that define the industry are often described in anecdotal terms. To address that information gap, the Knowledge Graph Conference commissioned this study to begin to quantify the size, dynamics and direction of the industry.  We hope you find the report and our extended analysis useful.
·zenodo.org·
Knowledge Graph Benchmarking Report 2021
Ontology-Based Feature Selection: A Survey
Ontology-Based Feature Selection: A Survey
The Semantic Web emerged as an extension to the traditional Web, adding meaning (semantics) to a distributed Web of structured and linked information. At its core, the concept of ontology provides the means to semantically describe and structure information, and expose it to software and human agents in a machine and human-readable form. For software agents to be realized, it is crucial to develop powerful artificial intelligence and machine-learning techniques, able to extract knowledge from information sources, and represent it in the underlying ontology. This survey aims to provide insight into key aspects of ontology-based knowledge extraction from various sources such as text, databases, and human expertise, realized in the realm of feature selection. First, common classification and feature selection algorithms are presented. Then, selected approaches, which utilize ontologies to represent features and perform feature selection and classification, are described. The selective and representative approaches span diverse application domains, such as document classification, opinion mining, manufacturing, recommendation systems, urban management, information security systems, and demonstrate the feasibility and applicability of such methods. This survey, in addition to the criteria-based presentation of related works, contributes a number of open issues and challenges related to this still active research topic.
·mdpi.com·
Ontology-Based Feature Selection: A Survey
The Case for RDF (Revisited)
The Case for RDF (Revisited)
Over the past few years, growth in the uptake of RDF has picked up steadily. In some domains, such as asset management and systems engineering, this growth is quite significant and driven by national and European standards.
·linkedin.com·
The Case for RDF (Revisited)
Reaction Graphs with Reaxys
Reaction Graphs with Reaxys
Knowledge graphs have been increasingly seen as a way to understand relationships among data. They are used for biological networks, drug information - and chemical reactions.
·linkedin.com·
Reaction Graphs with Reaxys
Inoreader - Take back control of your news feed
Inoreader - Take back control of your news feed
One place to keep up with all your information sources. With Inoreader, content comes to you, the minute it's available. Subscribe to RSS Feeds, Blogs, Podcasts, Twitter searches, Facebook pages, even Email Newsletters! Get unfiltered news feeds or filter them to your liking.
·inoreader.com·
Inoreader - Take back control of your news feed
Bruno Neri on LinkedIn: #graphneuralnetworks
Bruno Neri on LinkedIn: #graphneuralnetworks
"Design Space for Graph Neural Networks" by Jure Leskovec, Jiaxuan You, and Rex Ying "GNN designs are often specialized to a single task, yet few efforts...
·linkedin.com·
Bruno Neri on LinkedIn: #graphneuralnetworks
Virtual Graphs Deliver Sub-Second Query Times and 98% Cost Savings - Stardog
Virtual Graphs Deliver Sub-Second Query Times and 98% Cost Savings - Stardog
Our latest benchmark report, Trillion Edge Knowledge Graph, is the first demonstration of a massive knowledge graph that consists of materialized data and Virtual Graphs spanning hybrid multicloud data sources. We prove it is possible to have a 1 trillion-edge knowledge graph and deliver sub-second query times while achieving a 98% cost savings.
·stardog.com·
Virtual Graphs Deliver Sub-Second Query Times and 98% Cost Savings - Stardog
Introducing the Open Source Insights Project
Introducing the Open Source Insights Project
Google introduces the #OpenSource Insights Project Exploratory #visualization provides an interactive view of #OSS projects dependencies A full dependency graph is built/published, incorporating metadata, so you can see how it may affect your #software
·opensource.googleblog.com·
Introducing the Open Source Insights Project
Inoreader - Take back control of your news feed
Inoreader - Take back control of your news feed
One place to keep up with all your information sources. With Inoreader, content comes to you, the minute it's available. Subscribe to RSS Feeds, Blogs, Podcasts, Twitter searches, Facebook pages, even Email Newsletters! Get unfiltered news feeds or filter them to your liking.
·inoreader.com·
Inoreader - Take back control of your news feed
Ontologies and Ethical AI
Ontologies and Ethical AI
[vc_row type=”in_container” full_screen_row_position=”middle” scene_position=”center” text_color=”dark” text_align=”left” overlay_strength=”0.3″ shape_divider_position=”bottom”][vc_column column_padding=”no-extra-padding” column_padding_position=”all” background_color_opacity=”1″ background_hover_color_opacity=”1″ column_shadow=”none” column_border_radius=”none” width=”1/1″ tablet_text_alignment=”default” phone_text_alignment=”default” column_border_width=”none” column_border_style=”solid”][vc_column_text]What Is Ethical AI? Ethical, or responsible, artificial intelligence (AI), “is the...
·synaptica.com·
Ontologies and Ethical AI
Awesome Graph Classification
Awesome Graph Classification
I have been working on Awesome Graph Classification for years. It is a collection of ML techniques that solve graph classification problems: kernels, statistical...
·linkedin.com·
Awesome Graph Classification
Graph Representation Learning — The Encoder-Decoder Model (Part 2)
Graph Representation Learning — The Encoder-Decoder Model (Part 2)
This series summarizes a comprehensive taxonomy for machine learning on graphs and reports details on GraphEDM (Chami et. al), a new framework for unifying different learning approaches. Graphs are…
·medium.com·
Graph Representation Learning — The Encoder-Decoder Model (Part 2)