I worked on some experiments on RDF-to-text generation. The goal is to generate coherent multi-sentence texts from data in a knowledge graph. While not...
DIG: Dive into Graphs A research-oriented library that includes unified and extensible implementations of algorithms for (1) graph generation, (2) self-supervised...
Disney Advertising Sales Hosts First-Ever Disney Platform Tech Showcase
At the first-ever Disney Platform Tech Showcase, Disney Advertising Sales highlighted the Company’s investments in technology and innovation – unveiling strategies and solutions around data-driven precision, premium ad experiences and frictionless transactions for marketers.
"The UI allows individuals with no previous knowledge of the Semantic Web to query the DBpedia knowledge base...." > Interface to Query and Visualise Definitions from a Knowledge Base @anelia12430996 & Hélène De Ribaupierre https://t.co/QGSJSEq4Ab pic.twitter.com/EIhZRVikK0— Aaron Bradley (@aaranged) March 15, 2021
Need to link #KnowledgeGraphs? Our article on the #OpenSource link discovery framework LIMES (https://t.co/zSp8nSaDNG) is now available at https://t.co/Fy2JMNRKQE. With LIMES, we support #OpenScience on the integration of knowlege graphs @MAhmedSherif @kvndrsslr @mommi84— Axel Ngonga (@NgongaAxel) March 18, 2021
What is Semantic SEO? SEO is becoming more Semantic, and it's worth looking at how it is moving in that direction with knowledge panels, question-answering, and related entities
Importance of Topical Authority: A Semantic SEO Case Study - OnCrawl
Topical Authority and Semantic SEO will be discussed more frequently with the concept of Structured Search Engine in the coming years. In this article, you will learn how to use these techniques to grow organic traffic.
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.
[2102.05444] Information Extraction From Co-Occurring Similar Entities
Knowledge about entities and their interrelations is a crucial factor of success for tasks like question answering or text summarization. Publicly available knowledge graphs like Wikidata or...
[2102.10588] LMKG: Learned Models for Cardinality Estimation in Knowledge Graphs
Accurate cardinality estimates are a key ingredient to achieve optimal query plans. For RDF engines, specifically under common knowledge graph processing workloads, the lack of schema, correlated...
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...