Pascal Hitzler

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https://people.cs.ksu.edu/~hitzler/ Neurosymbolic AI, Knowledge Graphs, Semantic Web. Kansas State University. Opinions are my own.
Check out our preprint on "Towards Semantically Enriched Embeddings for #KnowledgeGraph Completion" coming soon as the EB special of #NeurosymbolicAI journal with interesting takeaways. It gives an overview of the current efforts on KG completion using #LLMs for KG completion & representation of type info & description logic axioms in the embedding spaces #ballembeddings #boxembeddings Frank van Harmelen Maribel Acosta Deibe @pascalhitzler Link: https://arxiv.org/abs/2308.00081
Towards Semantically Enriched Embeddings for Knowledge Graph Completion

Embedding based Knowledge Graph (KG) Completion has gained much attention over the past few years. Most of the current algorithms consider a KG as a multidirectional labeled graph and lack the ability to capture the semantics underlying the schematic information. In a separate development, a vast amount of information has been captured within the Large Language Models (LLMs) which has revolutionized the field of Artificial Intelligence. KGs could benefit from these LLMs and vice versa. This vision paper discusses the existing algorithms for KG completion based on the variations for generating KG embeddings. It starts with discussing various KG completion algorithms such as transductive and inductive link prediction and entity type prediction algorithms. It then moves on to the algorithms utilizing type information within the KGs, LLMs, and finally to algorithms capturing the semantics represented in different description logic axioms. We conclude the paper with a critical reflection on the current state of work in the community and give recommendations for future directions.

arXiv.org

The new edited book
Compendium of Neurosymbolic Artificial Intelligence
is now available - 30 chapters (700 pages), each conveying integrated content from several published papers of recent years.
https://www.iospress.com/catalog/books/compendium-of-neurosymbolic-artificial-intelligence

And FYI - we run a community slack on Neurosymbolic Artificial Intelligence which has by now over 700 people on it. If you'd like to join, just PM me.

Compendium of Neurosymbolic Artificial Intelligence | IOS Press

Compendium of Neurosymbolic Artificial Intelligence

IOS Press
Coming shortly ...
I just saw a post stating that ChatGPT passed the Turing test. So I did this (see image). Note that's not a retry. First attempt. And it went as expected ...
That's nice. Scientometric analysis based on Jie Tang's work. Based on this I'm ranked 9th in Knowledge Engineering world wide, and can call myself "AI 2000 Most Influential Scholar 2023" now. Of course all metrics have their peculiarities, but I'll take it 🙂
There's a track on "Deep Learning for and with Knowledge Graphs" at The Knowledge Graph Conference KGC2023 (May 8-12 in NYC). List of presentations is available now at
https://www.knowledgegraph.tech/session-by-track-test/ @mehwishalam
NeSy 2023 Call for Papers: 17th International Workshop on Neural-Symbolic Learning and Reasoning
(https://sites.google.com/view/nesy2023) to be held at La Certosa di Pontignano, Siena, Italy. July 3-5, 2023. Abstract submission deadline: March 6, 2023; paper submission deadline: March 13, 2023. @ArturGarcez @tarekbesold
NeSy2023

NeSy2023 will host a TAILOR EU network workshop La Certosa di Pontignano will jointly host NeSy2023 and the SaiConference The NeSy workshop series is the longest standing gathering for the presentation and discussion of cutting edge research in neurosymbolic AI. NeSy is the annual meeting of the

@ArturGarcez at AAAI
Are you a developer/admin interested in knowledge graphs, semantics (search), user interfaces, FAIR data management, and maybe machine learning? We are still hiring multiple people for the KnowWhereGraph; see, e.g., https://tinyurl.com/bdduvjxy
#knowledgegraphs #fair #datascience
GraphDB in Action: Putting the Most Reliable RDF Database to Work for Better Human-machine Interaction

Academia research projects use GraphDB to meet the challenges of heterogeneous and poor-quality data across various domains

Ontotext