In this paper, we present a novel approach to Web search result clustering based on the au-tomatic discovery of word senses from raw text, a task referred to as Word Sense Induc-tion (WSI). We first acquire the senses (i.e., meanings) of a query by means of a graph-based clustering algorithm that exploits cycles (triangles and squares) in the co-occurrence graph of the query. Then we cluster the search results based on their semantic similarity to the induced word senses. Our experiments, conducted on datasets of ambiguous queries, show that our approach improves search result clustering in terms of both clustering quality and degree of diversification.
Abstract- The rapid growth of the Internet has made the Web a popular place for collecting informati...
This paper presents an unsupervised algorithm which automatically discovers word senses from text. T...
A search engine usually returns a long list of web search results corresponding to a query from the ...
Web search result clustering aims to facilitate information search on the Web. Rather than the resul...
In this paper, we present a novel approach to Web search result clustering based on the automatic di...
We present a novel method for clustering Web search results based on Word Sense Induction. First, we...
In [12] a novel approach to Web search result clustering based on Word Sense Induction, i.e. the aut...
In [12] a novel approach to Web search result clustering based on Word Sense Induction, i.e. the aut...
The retrieval of any given piece of information on the Web is an arduous task which challenges even ...
A search engine usually returns a long list of web search results corresponding to a query from the ...
International audienceWord Sense Induction is an open problem in Natural Lan- guage Processing. Many...
International audienceWord Sense Induction is an open problem in Natural Lan- guage Processing. Many...
In [13] a novel approach to Web search result clustering based on Word Sense Induction, i.e. the aut...
In [13] a novel approach to Web search result clustering based on Word Sense Induction, i.e. the aut...
Word clustering is important for automatic thesaurus construction, text classification, and word sen...
Abstract- The rapid growth of the Internet has made the Web a popular place for collecting informati...
This paper presents an unsupervised algorithm which automatically discovers word senses from text. T...
A search engine usually returns a long list of web search results corresponding to a query from the ...
Web search result clustering aims to facilitate information search on the Web. Rather than the resul...
In this paper, we present a novel approach to Web search result clustering based on the automatic di...
We present a novel method for clustering Web search results based on Word Sense Induction. First, we...
In [12] a novel approach to Web search result clustering based on Word Sense Induction, i.e. the aut...
In [12] a novel approach to Web search result clustering based on Word Sense Induction, i.e. the aut...
The retrieval of any given piece of information on the Web is an arduous task which challenges even ...
A search engine usually returns a long list of web search results corresponding to a query from the ...
International audienceWord Sense Induction is an open problem in Natural Lan- guage Processing. Many...
International audienceWord Sense Induction is an open problem in Natural Lan- guage Processing. Many...
In [13] a novel approach to Web search result clustering based on Word Sense Induction, i.e. the aut...
In [13] a novel approach to Web search result clustering based on Word Sense Induction, i.e. the aut...
Word clustering is important for automatic thesaurus construction, text classification, and word sen...
Abstract- The rapid growth of the Internet has made the Web a popular place for collecting informati...
This paper presents an unsupervised algorithm which automatically discovers word senses from text. T...
A search engine usually returns a long list of web search results corresponding to a query from the ...