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DSC Weekly Digest 04 Jan 2022: Can Machine Learning Do Symbolic Manipulation? - DataScienceCentral.com
DSC Weekly Digest 04 Jan 2022: Can Machine Learning Do Symbolic Manipulation? - DataScienceCentral.com
Can Machine Learning Do Symbolic Manipulation?  I spent some time over the holidays engaged in a fascinating online conversation. The gist of it was a variation of an argument that has been going on in the realm of artificial intelligence from the time of Minsky and Seymour Papert: Whether it is possible for neural networks to… Read More »DSC Weekly Digest 04 Jan 2022: Can Machine Learning Do Symbolic Manipulation?
·datasciencecentral.com·
DSC Weekly Digest 04 Jan 2022: Can Machine Learning Do Symbolic Manipulation? - DataScienceCentral.com
What is Graph Intelligence? - Gradient Flow
What is Graph Intelligence? - Gradient Flow
How and why the best companies are adopting Graph Visual Analytics, Graph AI, and Graph Neural Networks. By Leo Meyerovich and Ben Lorica. [A version of this post originally appeared on the Graphistry blog.] In this post, we highlight the current state of Graph Intelligence, a new technology category around new tools and techniques forContinue reading "What is Graph Intelligence?"
·gradientflow.com·
What is Graph Intelligence? - Gradient Flow
Where Semantics and Machine Learning Converge - DataScienceCentral.com
Where Semantics and Machine Learning Converge - DataScienceCentral.com
Artificial Intelligence has a long history of oscillating between two somewhat contradictory poles. On one side, exemplified by Noam Chomsky, Marvin Minsky, Seymour Papert, and many others, is the idea that cognitive intelligence was algorithmic in nature – that there were a set of fundamental precepts that formed the foundation of language, and by extension,… Read More »Where Semantics and Machine Learning Converge
·datasciencecentral.com·
Where Semantics and Machine Learning Converge - DataScienceCentral.com
Learning SPARQL on Twitter
Learning SPARQL on Twitter
Interested in using Wikidata & Wiktionary to extract lexicographical information?@sina_ahm created a simple SPARQL query generator that helps non-experts get familiar w/ #SPARQL & create queries to look up words in @wikidata & #Dbnary:👉 https://t.co/gS6JG8EIFb#NLProc pic.twitter.com/9UOCABh3c9— ELEXIS EU (@elexis_eu) December 1, 2021
·twitter.com·
Learning SPARQL on Twitter
Aaron Bradley on Twitter
Aaron Bradley on Twitter
Curious about the most used ontologies in the agri-food domain? Our #Ontologies Community of Practice has developed a webpage featuring the most popular ontologies & info on those developed by @CGIAR and partners.Find it here: https://t.co/AMVeSHCpdi pic.twitter.com/LmazTo4V2T— CGIAR Platform for Big Data in Agriculture (@CGIAR_Data) December 9, 2021
·twitter.com·
Aaron Bradley on Twitter
Survey on English Entity Linking on Wikidata
Survey on English Entity Linking on Wikidata
"... most Entity Linking approaches use Wikidata in the same way as any other knowledge graph missing the chance to leverage Wikidata-specific characteristics to increase quality" > Survey on English Entity Linking on Wikidata https://t.co/JYHJMfVHsO pic.twitter.com/hRxRp3nhnQ— Aaron Bradley (@aaranged) December 10, 2021
·twitter.com·
Survey on English Entity Linking on Wikidata
Learning SPARQL on Twitter
Learning SPARQL on Twitter
Use our SPARQL micro-services to query #PubMedCentral with #SPARQL using a PMID or PMCID, and get article metadata in #RDF.https://t.co/1RKvb9GZkvhttps://t.co/XxjTUy2Gut@pubmed @wimmics @Inria @uca_research @Laboratoire_I3S #ScientificLitterature pic.twitter.com/bm8OdpzoaN— Michel Franck (@franck_michel2) December 7, 2021
·twitter.com·
Learning SPARQL on Twitter
How Data Modeling is different today
How Data Modeling is different today
Over the last 20 years my life revolved around doing “everything modeling” - building models, discussing modeling, teaching modeling and so on. Unsurprisingly, I have an opinion about models and modeling.
·linkedin.com·
How Data Modeling is different today
Reflections of knowledge
Reflections of knowledge
Designing Web APIs for sustainable interactions within decentralized knowledge graph ecosystems ◆ Web services emerged in the late 1990s as a way to access specific pieces of remote functionality, building on the standards-driven stability brought by the universal protocol that HTTP was readily becoming. Interestingly, the Web itself has drastically changed since…
·ruben.verborgh.org·
Reflections of knowledge