In data integration we transform information from a source into a target schema. A general problem in this task is loss of fidelity and coverage: the source expresses more knowledge than that can be fit into the target schema, or knowledge that is hard to fit into any schema at all. This problem is taken to an extreme in information extraction (IE) where the source is natural language---one of the most expressive forms of knowledge representation. To address this issue, one can either automatically learn a latent schema emergent in text (a brittle and ill-defined task), or manually define schemas. We propose instead to store data in a probabilistic representation of universal schema. This schema is simply the union of all source schemas, an...
This paper presents SOFIE, a system for automated ontology extension. SOFIE can parse natural langua...
This thesis presents work on learning representations of text and Knowledge Bases by taking into con...
Conceptual complexity is emerging as a new bottleneck as database developers, application developers...
In data integration we transform information from a source into a target schema. A general problem i...
Traditional relation extraction predicts relations within some fixed and finite target schema. Machi...
The schema of a database models the knowledge content of the database. However, database users often...
Making complex decisions in areas like science, government policy, finance, and clinical treatments ...
Equipping machines with comprehensive knowledge of the world's entities and their relationships has ...
Information Extraction, which aims to extract structural relational triple or event from unstructure...
This thesis explores how a large corpus of Is-a statements can be exploited for the task of schema m...
Schema matching is a critical problem for integrating heterogeneous information sources. Traditional...
Categorizing entities by their type is useful in many appli-cations, such as knowledge base construc...
AbstractThis paper is concerned with generalizing formal recognition methods from parsing theory to ...
Neural models have shown impressive performance gains in answering queries from natural language tex...
In many natural language processing tasks, contex-tual information from given documents alone is not...
This paper presents SOFIE, a system for automated ontology extension. SOFIE can parse natural langua...
This thesis presents work on learning representations of text and Knowledge Bases by taking into con...
Conceptual complexity is emerging as a new bottleneck as database developers, application developers...
In data integration we transform information from a source into a target schema. A general problem i...
Traditional relation extraction predicts relations within some fixed and finite target schema. Machi...
The schema of a database models the knowledge content of the database. However, database users often...
Making complex decisions in areas like science, government policy, finance, and clinical treatments ...
Equipping machines with comprehensive knowledge of the world's entities and their relationships has ...
Information Extraction, which aims to extract structural relational triple or event from unstructure...
This thesis explores how a large corpus of Is-a statements can be exploited for the task of schema m...
Schema matching is a critical problem for integrating heterogeneous information sources. Traditional...
Categorizing entities by their type is useful in many appli-cations, such as knowledge base construc...
AbstractThis paper is concerned with generalizing formal recognition methods from parsing theory to ...
Neural models have shown impressive performance gains in answering queries from natural language tex...
In many natural language processing tasks, contex-tual information from given documents alone is not...
This paper presents SOFIE, a system for automated ontology extension. SOFIE can parse natural langua...
This thesis presents work on learning representations of text and Knowledge Bases by taking into con...
Conceptual complexity is emerging as a new bottleneck as database developers, application developers...