Cryptocurrencies Activity as a Complex Network: Analysis of...
The number of users approaching the world of cryptocurrencies exploded in the last years, and consequently the daily interactions on their underlying distributed ledgers have intensified. In this...
Vasudev Lal on LinkedIn: Taming Broad/Shallow AI with Explicit Knowledge & Bridging Human-AI
My keynote at CIKM 2021 workshop on Knowledge Injection in Neural Networks--about uses/misuses of #LLMs, importance of explicit knowledge, and our ongoing...
A knowledge graph (KG) is a data structure which represents entities and relations as the vertices and edges of a directed graph with edge types. KGs are an important primitive in modern machine...
Ein Knowledge Graph als moderne Form der Datenarchitektur. Gäste werden künftig zunehmend auch sprachbasiert nach Informationen suchen. Die Sprachanfragen werden also mittels Diktierfunktion auf dem Smartphone eingesprochen oder in Form von Fragen an digitale Assistenten wie den Google Assistant oder Alexa von Amazon gerichtet. Bei der
London-based Memgraph raises over €8 million in seed funding to provide Streaming Graph Algorithms to the masses
Memgraph, the streaming graph application platform, today announced Memgraph 2.0, the public launch of its source-available platform, which makes it easy
GitHub - pykeen/pykeen: 🤖 A Python library for learning and evaluating knowledge graph embeddings
🤖 A Python library for learning and evaluating knowledge graph embeddings - GitHub - pykeen/pykeen: 🤖 A Python library for learning and evaluating knowledge graph embeddings
Tom Sawyer Software on LinkedIn: #graph #complexity #IoT
Not all information needs to be seen at first sight. Child drawings allow you to expand a parent node and see more elements. See the #graph at the level...
Rating and aspect-based opinion graph embeddings for explainable...
The success of neural network embeddings has entailed a renewed interest in
using knowledge graphs for a wide variety of machine learning and information
retrieval tasks. In particular, recent...
Connect the Dots: Harness the Power of Graphs & ML - OpenCredo
Our e-book aims to shed light on what we believe is a real game-changer for those looking to improve upon simplistic answers sometimes arrived at by using traditional ML algorithms and approaches. We show how you are able to combine the power of both graphs and ML (in a variety of different ways) to help you arrive at better answers compared to using standard ML approaches alone.
Modelling Art Interpretation and Meaning. A Data Model for...
Iconology is a branch of art history that investigates the meaning of artworks in relation to their social and cultural background. Nowadays, several interdisciplinary research fields leverage...
Philip Vollet on LinkedIn: #datascience #nlp #graphs
Graph Neural Networks for Natural Language Processing: A Survey Paper https://lnkd.in/gefRmQi Deep learning has become the dominant approach in coping...
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
Taxonomies are crucial for businesses and institutions to handle bigger amounts of data. Manually organizing thousands of concepts into a knowledge tree has so far been the only way to do this. Aside
Causaly raises $17 million to accelerate biomedical research and discovery of scientific breakthroughs
Causaly, the London-based company that allows researchers and specialists to intuitively map and navigate the intricate landscape of biomedical research, has raised $17 million from investors to grow its team and expand into new markets.
Human Activity Recognition Models in Ontology Networks
We present Arianna+, a framework to design networks of ontologies for
representing knowledge enabling smart homes to perform human activity
recognition online. In the network, nodes are ontologies...
Seeing All From a Few: Nodes Selection Using Graph Pooling for...
Graph clustering aiming to obtain a partition of data using the graph
information, has received considerable attention in recent years. However,
noisy edges and nodes in the graph may make the...
Over the recent years, Graph Neural Networks have become increasingly popular
in network analytic and beyond. With that, their architecture noticeable
diverges from the classical multi-layered...