Ontology-based knowledge bases (KBs) like DBpedia are very valuable resources, but their usefulness and usability is limited by various quality issues. One such issue is the use of string literals instead of semantically typed entities. In this paper we study the automated canonicalization of such literals, i.e., replacing the literal with an existing entity from the KB or with a new entity that is typed using classes from the KB. We propose a framework that combines both reasoning and machine learning in order to predict the relevant entities and types, and we evaluate this framework against state-of-the-art baselines for both semantic typing and entity matching
DoctoralEntity-centric knowledge bases are large collections of facts about entities of public inter...
Walter S, Unger C, Cimiano P. ATOLL - A framework for the automatic induction of ontology lexica. Da...
These are the datasets used in the Entity Type Prediction task for Knowledge Graph Completion. DB...
Master's thesis in Computer ScienceKnowledge bases contain vast amounts of information about entitie...
Fine-grained entity typing aims to identify the semantic type of an entity in a particular plain tex...
Knowledge is key to natural language understanding. References to specific people, places and things...
In this work we argue for the definition a knowledge-based entity matching framework for the impleme...
International audienceA difficult task when generating text from knowledge bases (KB) consists in fi...
Wikipedia is the largest online encyclopedia, which appears in more than 301 different languages, wi...
There is a well-known lexical gap between content expressed in the form of natural language (NL) tex...
The evolution of search from keywords to entities has necessitated the efficient harvesting and mana...
The evolution of search from keywords to entities has necessitated the efficient harvesting and mana...
Extracting structured information from text plays a crucial role in automatic knowledge acquisition ...
Human communication is inevitably grounded in the real world. Existing work on natural language proc...
Conference paperThe recognition of entities in text is the basis for a series of applications. Synon...
DoctoralEntity-centric knowledge bases are large collections of facts about entities of public inter...
Walter S, Unger C, Cimiano P. ATOLL - A framework for the automatic induction of ontology lexica. Da...
These are the datasets used in the Entity Type Prediction task for Knowledge Graph Completion. DB...
Master's thesis in Computer ScienceKnowledge bases contain vast amounts of information about entitie...
Fine-grained entity typing aims to identify the semantic type of an entity in a particular plain tex...
Knowledge is key to natural language understanding. References to specific people, places and things...
In this work we argue for the definition a knowledge-based entity matching framework for the impleme...
International audienceA difficult task when generating text from knowledge bases (KB) consists in fi...
Wikipedia is the largest online encyclopedia, which appears in more than 301 different languages, wi...
There is a well-known lexical gap between content expressed in the form of natural language (NL) tex...
The evolution of search from keywords to entities has necessitated the efficient harvesting and mana...
The evolution of search from keywords to entities has necessitated the efficient harvesting and mana...
Extracting structured information from text plays a crucial role in automatic knowledge acquisition ...
Human communication is inevitably grounded in the real world. Existing work on natural language proc...
Conference paperThe recognition of entities in text is the basis for a series of applications. Synon...
DoctoralEntity-centric knowledge bases are large collections of facts about entities of public inter...
Walter S, Unger C, Cimiano P. ATOLL - A framework for the automatic induction of ontology lexica. Da...
These are the datasets used in the Entity Type Prediction task for Knowledge Graph Completion. DB...