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Commonsense Knowledge in Wikidata
Commonsense Knowledge in Wikidata
Wikidata and Wikipedia have been proven useful for reason-ing in natural language applications, like question answering or entitylinking. Yet, no existing work has studied the potential of...
·arxiv.org·
Commonsense Knowledge in Wikidata
The Open World Assumption Considered Harmful
The Open World Assumption Considered Harmful
A frequent source of confusion with ontologies and more generally with any kind of information system is the Open World Assumption. This trips up novice inexperienced users, but as I will argue in …
·douroucouli.wordpress.com·
The Open World Assumption Considered Harmful
Semantic Knowledge Graphing Market Analysis and Forecast 2020: By Keyplayers Google Inc., metaphacts GmbH, Stardog Union, Grakn Labs, Microsoft Corporation, LinkedIn, Semantic Web Company, Baidu, Yandex, Wolfram Alpha, and Ontotext.
Semantic Knowledge Graphing Market Analysis and Forecast 2020: By Keyplayers Google Inc., metaphacts GmbH, Stardog Union, Grakn Labs, Microsoft Corporation, LinkedIn, Semantic Web Company, Baidu, Yandex, Wolfram Alpha, and Ontotext.
Don t Quarantine Your Research you keep your social distance and we provide you a social DISCOUNT use QUARANTINEDAYS Code in precise requirement and Get FLAT 1000USD OFF on all CMI reports The Knowledge Graph can be defined as the ...
·openpr.com·
Semantic Knowledge Graphing Market Analysis and Forecast 2020: By Keyplayers Google Inc., metaphacts GmbH, Stardog Union, Grakn Labs, Microsoft Corporation, LinkedIn, Semantic Web Company, Baidu, Yandex, Wolfram Alpha, and Ontotext.
All About Knowledge Graphs for Actions
All About Knowledge Graphs for Actions
Current action recognition systems require large amounts of training data for recognizing an action. Recent works have explored the paradigm of zero-shot and few-shot learning to learn classifiers...
·arxiv.org·
All About Knowledge Graphs for Actions
GOSH: Embedding Big Graphs on Small Hardware
GOSH: Embedding Big Graphs on Small Hardware
In graph embedding, the connectivity information of a graph is used to represent each vertex as a point in a d-dimensional space. Unlike the original, irregular structural information, such a...
·arxiv.org·
GOSH: Embedding Big Graphs on Small Hardware
Architectural Implications of Graph Neural Networks
Architectural Implications of Graph Neural Networks
Graph neural networks (GNN) represent an emerging line of deep learning models that operate on graph structures. It is becoming more and more popular due to its high accuracy achieved in many...
·arxiv.org·
Architectural Implications of Graph Neural Networks
Graph Embedding with Data Uncertainty
Graph Embedding with Data Uncertainty
spectral-based subspace learning is a common data preprocessing step in many machine learning pipelines. The main aim is to learn a meaningful low dimensional embedding of the data. However, most...
·arxiv.org·
Graph Embedding with Data Uncertainty
CROssBAR: Comprehensive Resource of Biomedical Relations with Deep Learning Applications and Knowledge Graph Representations
CROssBAR: Comprehensive Resource of Biomedical Relations with Deep Learning Applications and Knowledge Graph Representations
Systemic analysis of available large-scale biological and biomedical data is critical for developing novel and effective treatment approaches against both complex and infectious diseases. Owing to the fact that different sections of the biomedical data is produced by different organizations/institutions using various types of technologies, the data are scattered across individual computational resources, without any explicit relations/connections to each other, which greatly hinders the comprehensive multi-omics-based analysis of data. We aimed to address this issue by constructing a new bi...
·biorxiv.org·
CROssBAR: Comprehensive Resource of Biomedical Relations with Deep Learning Applications and Knowledge Graph Representations
The Coronavirus Network Explorer: Mining a large-scale knowledge graph for effects of SARS-CoV-2 on host cell function
The Coronavirus Network Explorer: Mining a large-scale knowledge graph for effects of SARS-CoV-2 on host cell function
Building on recent work that identified human host proteins that interact with SARS-CoV-2 viral proteins in the context of an affinity-purification mass spectrometry screen, we use a machine learning-based approach to connect the viral proteins to relevant biological functions and diseases in a large-scale knowledge graph derived from the biomedical literature. Our aim is to explore how SARS-CoV-2 could interfere with various host cell functions, and also to identify additional drug targets amongst the host genes that could potentially be modulated against COVID-19. Results are presented in...
·biorxiv.org·
The Coronavirus Network Explorer: Mining a large-scale knowledge graph for effects of SARS-CoV-2 on host cell function
WikiResearch on Twitter
WikiResearch on Twitter
"What if we had no Wikipedia? Domain-independent Term Extraction from a Large News Corpus" identifying “wiki-worthy” terms in a massive news corpus, with minimal dependency on actual Wikipedia entries.(Bilu et al, 2020)https://t.co/wEts0vt9tl pic.twitter.com/7Zv3AnPZXt— WikiResearch (@WikiResearch) September 18, 2020
·twitter.com·
WikiResearch on Twitter
Graph Databases for Dummies
Graph Databases for Dummies
Get this introductory book on graph databases to learn the basics of the fastest-growing database technology and get started on your own graph project.
·neo4j.com·
Graph Databases for Dummies