This paper describes a minimally guided approach to automatic domain model creation. The first step is to carve an area of interest out of the Wikipedia hierarchy based on a simple query or other starting point. The second step is to connect the concepts in this domain hierarchy with named relationships. A starting point is provided by Linked Open Data, such as DBPedia. Based on these community-generated facts we train a pattern-based fact-extraction algorithm to augment a domain hierarchy with previously unknown relationship occurrences. Pattern vectors are learned that represent occurrences of relationships between concepts. The process described can be fully automated and the number of relationships that can be learned grows as the commu...
This paper proposes the automatic acquisition of binary relational patterns (i.e. portions of text e...
This paper proposes the automatic acquisition of binary relational patterns (i.e. portions of text e...
Abstract. Textual patterns have been used effectively to extract information from large text collect...
This paper describes a minimally guided approach to automatic domain model creation. The first step ...
This paper describes a minimally guided approach to automatic domain model creation. The first step ...
This paper describes a minimally guided approach to automatic domain model creation. The first step ...
This paper describes a minimally guided approach to automatic domain model creation. The first step ...
This paper describes a minimally guided approach to automatic domain model creation. The first step ...
This paper describes a minimally guided approach to automatic domain model creation. The first step ...
This paper describes a minimally guided approach to auto-matic domain model creation. The first step...
This paper describes a minimally guided approach to auto-matic domain model creation. The first step...
We present a minimally-supervised approach for learning part whole relations from texts. Unlike prev...
We present a minimally-supervised approach for learning part whole relations from texts. Unlike prev...
We present a minimally-supervised approach for learning part whole relations from texts. Unlike prev...
We present a minimally-supervised approach for learning part whole relations from texts. Unlike prev...
This paper proposes the automatic acquisition of binary relational patterns (i.e. portions of text e...
This paper proposes the automatic acquisition of binary relational patterns (i.e. portions of text e...
Abstract. Textual patterns have been used effectively to extract information from large text collect...
This paper describes a minimally guided approach to automatic domain model creation. The first step ...
This paper describes a minimally guided approach to automatic domain model creation. The first step ...
This paper describes a minimally guided approach to automatic domain model creation. The first step ...
This paper describes a minimally guided approach to automatic domain model creation. The first step ...
This paper describes a minimally guided approach to automatic domain model creation. The first step ...
This paper describes a minimally guided approach to automatic domain model creation. The first step ...
This paper describes a minimally guided approach to auto-matic domain model creation. The first step...
This paper describes a minimally guided approach to auto-matic domain model creation. The first step...
We present a minimally-supervised approach for learning part whole relations from texts. Unlike prev...
We present a minimally-supervised approach for learning part whole relations from texts. Unlike prev...
We present a minimally-supervised approach for learning part whole relations from texts. Unlike prev...
We present a minimally-supervised approach for learning part whole relations from texts. Unlike prev...
This paper proposes the automatic acquisition of binary relational patterns (i.e. portions of text e...
This paper proposes the automatic acquisition of binary relational patterns (i.e. portions of text e...
Abstract. Textual patterns have been used effectively to extract information from large text collect...