Lexical resource differ from encyclopaedic resources and represent two distinct types of resource covering general language and named entities respectively. However, many lexical resources, including Princeton WordNet, contain many proper nouns, referring to named entities in the world yet it is not possible or desirable for a lexical resource to cover all named entities that may reasonably occur in a text. In this paper, we propose that instead of including synsets for instance concepts PWN should instead provide links to Wikipedia articles describing the concept. In order to enable this we have created a gold-quality mapping between all of the 7,742 instances in PWN and Wikipedia (where such a mapping is possible). As such, this resource ...
In this paper we present an automatic multilingual annotation of the Wikipedia dumps in two language...
This paper presents the automatic extension of Princeton WordNet with Named Entities (NEs). This new...
Wikipedia provides a knowledge base for computing word relatedness in a more structured fashion than...
Lexical resource differ from encyclopaedic resources and represent two distinct types of resource co...
Lexical knowledge bases (LKBs), such as WordNet, have been shown to be useful for a range of languag...
In this paper we present the mapping between WordNet domains and WordNet topics, and the emergent Wi...
WordNet is the most widely used lexical resource for English, while Wikidata is one of the largest k...
We present UWN, a large multilingual lexi-cal knowledge base that describes the mean-ings and relati...
In this paper, we address the issue of automatic extending lexical resources by exploiting existing ...
The hyperlink structure of Wikipedia constitutes a key resource for many Natural Language Processing...
{zesch,gurevych,max} (at) tk.informatik.tu-darmstadt.de Abstract. We analyze Wikipedia as a lexical ...
This paper presents the automatic extension of Princeton WordNet with Named Entities (NEs). This new...
Wikipedia provides a semantic network for computing semantic relatedness in a more structured fashio...
AbstractA knowledge base for real-world language processing applications should consist of a large b...
In this paper we present an approach for building a Wikipedia-based semantic network by integrating ...
In this paper we present an automatic multilingual annotation of the Wikipedia dumps in two language...
This paper presents the automatic extension of Princeton WordNet with Named Entities (NEs). This new...
Wikipedia provides a knowledge base for computing word relatedness in a more structured fashion than...
Lexical resource differ from encyclopaedic resources and represent two distinct types of resource co...
Lexical knowledge bases (LKBs), such as WordNet, have been shown to be useful for a range of languag...
In this paper we present the mapping between WordNet domains and WordNet topics, and the emergent Wi...
WordNet is the most widely used lexical resource for English, while Wikidata is one of the largest k...
We present UWN, a large multilingual lexi-cal knowledge base that describes the mean-ings and relati...
In this paper, we address the issue of automatic extending lexical resources by exploiting existing ...
The hyperlink structure of Wikipedia constitutes a key resource for many Natural Language Processing...
{zesch,gurevych,max} (at) tk.informatik.tu-darmstadt.de Abstract. We analyze Wikipedia as a lexical ...
This paper presents the automatic extension of Princeton WordNet with Named Entities (NEs). This new...
Wikipedia provides a semantic network for computing semantic relatedness in a more structured fashio...
AbstractA knowledge base for real-world language processing applications should consist of a large b...
In this paper we present an approach for building a Wikipedia-based semantic network by integrating ...
In this paper we present an automatic multilingual annotation of the Wikipedia dumps in two language...
This paper presents the automatic extension of Princeton WordNet with Named Entities (NEs). This new...
Wikipedia provides a knowledge base for computing word relatedness in a more structured fashion than...