This paper presents deepKnowNet, a new fully automatic method for building highly dense and accurate knowledge bases from existing semantic resources. Basically, the method applies a knowledge-based Word Sense Disambiguation algorithm to assign the most appro-priate WordNet sense to large sets of topically related words acquired from the web, named TSWEB. This Word Sense Disambiguation algorithm is the personalized PageRank algorithm implemented in UKB. This new method improves by automatic means the current content of WordNet by creating large volumes of new and accurate semantic relations between synsets. KnowNet was our first attempt towards the acquisition of large volumes of semantic relations. However, KnowNet had some limitations tha...
This paper presents a method of acquiring knowledge from the Web for noun sense disambiguation. Word...
Abstract. This paper explores the possibility to exploit text on the world wide web in order to enri...
We describe the automatic construction of a semantic network1, in which over 3000 of the most freque...
This paper presents deepKnowNet, a new fully automatic method for building highly dense and accurate...
This paper presents deepKnowNet, a new fully automatic method for building highly dense and accurate...
This paper presents a new fully automatic method for building highly dense and accurate knowledge ba...
This paper presents a new fully automatic method for building highly dense and accurate knowledge ba...
Topic signatures are context vectors built for word senses and concepts. They can be automatically a...
This paper presents a new fully auto-matic method for building highly dense and accurate knowledge b...
This paper presents a new fully auto-matic method for building highly dense and accurate knowledge b...
This paper presents a new fully auto-matic method for building highly dense and accurate knowledge b...
This article discusses PageRank on semantic networks, with application to word sense disambiguation
We rely more and more on machines to organise, analyse and summarise the vast amount of textual digi...
Computational complexity is a characteristic of almost all Lesk-based algorithms for word sense disa...
We describe the automatic construction of a semantic network1, in which over 3000 of the most freque...
This paper presents a method of acquiring knowledge from the Web for noun sense disambiguation. Word...
Abstract. This paper explores the possibility to exploit text on the world wide web in order to enri...
We describe the automatic construction of a semantic network1, in which over 3000 of the most freque...
This paper presents deepKnowNet, a new fully automatic method for building highly dense and accurate...
This paper presents deepKnowNet, a new fully automatic method for building highly dense and accurate...
This paper presents a new fully automatic method for building highly dense and accurate knowledge ba...
This paper presents a new fully automatic method for building highly dense and accurate knowledge ba...
Topic signatures are context vectors built for word senses and concepts. They can be automatically a...
This paper presents a new fully auto-matic method for building highly dense and accurate knowledge b...
This paper presents a new fully auto-matic method for building highly dense and accurate knowledge b...
This paper presents a new fully auto-matic method for building highly dense and accurate knowledge b...
This article discusses PageRank on semantic networks, with application to word sense disambiguation
We rely more and more on machines to organise, analyse and summarise the vast amount of textual digi...
Computational complexity is a characteristic of almost all Lesk-based algorithms for word sense disa...
We describe the automatic construction of a semantic network1, in which over 3000 of the most freque...
This paper presents a method of acquiring knowledge from the Web for noun sense disambiguation. Word...
Abstract. This paper explores the possibility to exploit text on the world wide web in order to enri...
We describe the automatic construction of a semantic network1, in which over 3000 of the most freque...