The success of machine learning approaches to word sense disambiguation (WSD) is largely dependent on the representation of the context in which an ambiguous word occurs. Typically, the contexts are represented as the vector space using "Bag of Words (BoW)" technique. Despite its ease of use, BoW representation suffers from well-known limitations, mostly due to its inability to exploit semantic similarity between terms. In this paper, we apply the semantic diffusion kernel, which models semantic similarity by means of a diffusion process on a graph defined by lexicon and co-occurrence information, to smooth the BoW representation for WSD systems. Semantic diffusion kernel can be obtained through a matrix exponentiation transformat...
Most word representation methods assume that each word owns a single semantic vec-tor. This is usual...
The term of word sense disambiguation, WSD, is introduced in the context of text document processing...
International audienceIn this paper, we develop a new way of creating sense vectors for any dictiona...
The success of machine learning approaches to word sense disambiguation (WSD) is largely dependent o...
This paper proposes a novel approach to improve the kernel-based Word Sense Disambiguation (WSD). We...
This is graph-based word vector representations data for our publication "Word Sense Disambiguation ...
In this paper we present a supervised Word Sense Disambiguation methodology, that exploits kernel me...
This paper describes a new Word Sense Disambiguation (WSD) algorithm which extends two well-known va...
We describe a method for automatic word sense disambiguation using a text corpus and a machine-reada...
Word Sense Disambiguation (WSD) is an important area which has an impact on improving the performanc...
Supervised models for Word Sense Disambiguation (WSD) currently yield to state-of-the-art results in...
We present a new approach to word sense disambiguation derived from recent ideas in distributional s...
We introduce a new method for unsupervised knowledge-based word sense disambiguation (WSD) based on ...
~ord Sense Disambiguation (WSD) is the process of identifying the meaning of the words in context of...
We propose a simple, yet effective, Word Sense Disambiguation method that uses a combination of a le...
Most word representation methods assume that each word owns a single semantic vec-tor. This is usual...
The term of word sense disambiguation, WSD, is introduced in the context of text document processing...
International audienceIn this paper, we develop a new way of creating sense vectors for any dictiona...
The success of machine learning approaches to word sense disambiguation (WSD) is largely dependent o...
This paper proposes a novel approach to improve the kernel-based Word Sense Disambiguation (WSD). We...
This is graph-based word vector representations data for our publication "Word Sense Disambiguation ...
In this paper we present a supervised Word Sense Disambiguation methodology, that exploits kernel me...
This paper describes a new Word Sense Disambiguation (WSD) algorithm which extends two well-known va...
We describe a method for automatic word sense disambiguation using a text corpus and a machine-reada...
Word Sense Disambiguation (WSD) is an important area which has an impact on improving the performanc...
Supervised models for Word Sense Disambiguation (WSD) currently yield to state-of-the-art results in...
We present a new approach to word sense disambiguation derived from recent ideas in distributional s...
We introduce a new method for unsupervised knowledge-based word sense disambiguation (WSD) based on ...
~ord Sense Disambiguation (WSD) is the process of identifying the meaning of the words in context of...
We propose a simple, yet effective, Word Sense Disambiguation method that uses a combination of a le...
Most word representation methods assume that each word owns a single semantic vec-tor. This is usual...
The term of word sense disambiguation, WSD, is introduced in the context of text document processing...
International audienceIn this paper, we develop a new way of creating sense vectors for any dictiona...