We present and analyze a theoretical model designed to understand and explain the effectiveness of ontologies for learning multiple related tasks from primarily unlabeled data. We present both information-theoretic results as well as efficient algorithms. We show in this model that an ontology, which specifies the relationships between multiple outputs, in some cases is sufficient to completely learn a classification using a large unlabeled data source</p
By providing interoperability and shared meaning across actors and domains, lightweight domain on...
We describe an automatic algorithm able to learn university courses ontologies from experimental dat...
We have tested this by developing a small prototype that used thecorpora of labeled documents with s...
We present and analyze a theoretical model designed to understand and explain the ef-fectiveness of ...
Data-driven elicitation of ontologies from struc-tured data is a well-recognized knowledge acquisi-t...
Ontology plays a critical role in knowledge engineering and knowledge graphs (KGs). However, buildin...
Recent advances in computing, communications, and digital storage technologies, together with develo...
The Semantic Web relies heavily on the formal ontologies that structure underlying data for the purp...
Data-driven elicitation of ontologies from structured data is a well-recognized knowledge acquisitio...
An ontology is a knowledge-representation structure, where words, terms or concepts are defined by t...
Abstract. There is an urgent need for sound approaches to integrative and collaborative analysis of ...
Ontologies are used to represent knowledge in a formal and unambiguous way, facilitating its reuse a...
We argue that for a personal agent working within a Semantic Web framework, machine learning is ess...
This paper proposes a domain independent method for handling interoperability problems by learning a...
We consider the problem of using a large unlabeled sample to boost performance of a learning algorit...
By providing interoperability and shared meaning across actors and domains, lightweight domain on...
We describe an automatic algorithm able to learn university courses ontologies from experimental dat...
We have tested this by developing a small prototype that used thecorpora of labeled documents with s...
We present and analyze a theoretical model designed to understand and explain the ef-fectiveness of ...
Data-driven elicitation of ontologies from struc-tured data is a well-recognized knowledge acquisi-t...
Ontology plays a critical role in knowledge engineering and knowledge graphs (KGs). However, buildin...
Recent advances in computing, communications, and digital storage technologies, together with develo...
The Semantic Web relies heavily on the formal ontologies that structure underlying data for the purp...
Data-driven elicitation of ontologies from structured data is a well-recognized knowledge acquisitio...
An ontology is a knowledge-representation structure, where words, terms or concepts are defined by t...
Abstract. There is an urgent need for sound approaches to integrative and collaborative analysis of ...
Ontologies are used to represent knowledge in a formal and unambiguous way, facilitating its reuse a...
We argue that for a personal agent working within a Semantic Web framework, machine learning is ess...
This paper proposes a domain independent method for handling interoperability problems by learning a...
We consider the problem of using a large unlabeled sample to boost performance of a learning algorit...
By providing interoperability and shared meaning across actors and domains, lightweight domain on...
We describe an automatic algorithm able to learn university courses ontologies from experimental dat...
We have tested this by developing a small prototype that used thecorpora of labeled documents with s...