Information retrieval using word senses is emerging as a good research challenge on semantic information retrieval. In this paper, we propose a new method using word senses in information retrieval: root sense tagging method. This method assigns coarse-grained word senses defined in WordNet to query terms and document terms by unsupervised way using co-occurrence information constructed automatically. Our sense tagger is crude, but performs consistent disambiguation by considering only the single most informative word as evidence to disambiguate the target word. We also allow multiple-sense assignment to alleviate the problem caused by incorrect disambiguation. Experimental results on a large-scale TREC collection show that our approach to ...
Although always present in text, word sense ambiguity only recently became regarded as a problem to ...
Word Sense Disambiguation (WSD) is traditionally considered an AI-hard problem. In fact, a breakthro...
The unavailability of very large corpora with se-mantically disambiguated words is a major limi-tati...
This paper proposes an algorithm for word sense disambiguation based on a vector representation of w...
The problems of word sense disambiguation and document indexing for information retrieval have been ...
This paper proposes an Information Retrieval (IR) system that integrates sense discrimination to ove...
The unavailability of very large corpora with semantically disambiguated words is a major limitation...
In this paper we show that an unsupervised method for ranking word senses automatically can be used ...
Word sense representation is important in the tasks of information retrieval(IR).Existing lexical da...
Word sense representation is important in the tasks of information retrieval (IR). Existing lexical ...
Although always present in text, word sense ambiguity only recently became regarded as a problem to ...
An important problem in Natural Language Processing is identifying the correct sense of a word in a ...
The granularity of word senses in current general purpose sense inventories is often too �ne-grained...
Sense tagging, the automatic assignment of the appropriate sense from some lexicon to each of the wo...
This task was meant to compare the results of two different retrieval techniques: the first one was ...
Although always present in text, word sense ambiguity only recently became regarded as a problem to ...
Word Sense Disambiguation (WSD) is traditionally considered an AI-hard problem. In fact, a breakthro...
The unavailability of very large corpora with se-mantically disambiguated words is a major limi-tati...
This paper proposes an algorithm for word sense disambiguation based on a vector representation of w...
The problems of word sense disambiguation and document indexing for information retrieval have been ...
This paper proposes an Information Retrieval (IR) system that integrates sense discrimination to ove...
The unavailability of very large corpora with semantically disambiguated words is a major limitation...
In this paper we show that an unsupervised method for ranking word senses automatically can be used ...
Word sense representation is important in the tasks of information retrieval(IR).Existing lexical da...
Word sense representation is important in the tasks of information retrieval (IR). Existing lexical ...
Although always present in text, word sense ambiguity only recently became regarded as a problem to ...
An important problem in Natural Language Processing is identifying the correct sense of a word in a ...
The granularity of word senses in current general purpose sense inventories is often too �ne-grained...
Sense tagging, the automatic assignment of the appropriate sense from some lexicon to each of the wo...
This task was meant to compare the results of two different retrieval techniques: the first one was ...
Although always present in text, word sense ambiguity only recently became regarded as a problem to ...
Word Sense Disambiguation (WSD) is traditionally considered an AI-hard problem. In fact, a breakthro...
The unavailability of very large corpora with se-mantically disambiguated words is a major limi-tati...