Difference between revisions of "Multiword Noun Compound Bracketing Using Wikipedia"

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'''Multiword Noun Compound Bracketing Using Wikipedia''' - scientific work related to [[Wikipedia quality]] published in 2014, written by [[Caroline Barri]].
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{{Infobox work
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| title = Multiword Noun Compound Bracketing Using Wikipedia
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| date = 2014
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| authors = [[Caroline Barrière]]<br />[[Pierre André Ménard]]
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| doi = 10.3115/v1/W14-5708
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| link = http://aclweb.org/anthology/W/W14/W14-2117.pdf
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| plink = https://www.researchgate.net/profile/Caroline_Barriere/publication/269691975_Multi-word_noun_compound_bracketing_using_Wikipedia/links/54c694950cf238bb7d09197a.pdf
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}}
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'''Multiword Noun Compound Bracketing Using Wikipedia''' - scientific work related to [[Wikipedia quality]] published in 2014, written by [[Caroline Barrière]] and [[Pierre André Ménard]].
  
 
== Overview ==
 
== Overview ==
 
This research suggests two contributions in relation to the multiword noun compound bracketing problem: first, demonstrate the usefulness of [[Wikipedia]] for the task, and second, present a novel bracketing method relying on a word association model. The intent of the association model is to represent combined evidence about the possibly lexical, relational or coordinate nature of links between all pairs of words within a compound. As for Wikipedia, it is promoted for its encyclopedic nature, meaning it describes terms and [[named entities]], as well as for its size, large enough for corpus-based statistical analysis. Both types of information will be used in measuring evidence about lexical units, noun relations and noun coordinates in order to feed the association model in the bracketing algorithm. Using a gold standard of around 4800 multiword noun compounds, authors show performances of 73% in a strict match evaluation, comparing favourably to results reported in the literature using unsupervised approaches.
 
This research suggests two contributions in relation to the multiword noun compound bracketing problem: first, demonstrate the usefulness of [[Wikipedia]] for the task, and second, present a novel bracketing method relying on a word association model. The intent of the association model is to represent combined evidence about the possibly lexical, relational or coordinate nature of links between all pairs of words within a compound. As for Wikipedia, it is promoted for its encyclopedic nature, meaning it describes terms and [[named entities]], as well as for its size, large enough for corpus-based statistical analysis. Both types of information will be used in measuring evidence about lexical units, noun relations and noun coordinates in order to feed the association model in the bracketing algorithm. Using a gold standard of around 4800 multiword noun compounds, authors show performances of 73% in a strict match evaluation, comparing favourably to results reported in the literature using unsupervised approaches.
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== Embed ==
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=== Wikipedia Quality ===
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Barrière, Caroline; Ménard, Pierre André. (2014). "[[Multiword Noun Compound Bracketing Using Wikipedia]]".DOI: 10.3115/v1/W14-5708.
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=== English Wikipedia ===
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{{cite journal |last1=Barrière |first1=Caroline |last2=Ménard |first2=Pierre André |title=Multiword Noun Compound Bracketing Using Wikipedia |date=2014 |doi=10.3115/v1/W14-5708 |url=https://wikipediaquality.com/wiki/Multiword_Noun_Compound_Bracketing_Using_Wikipedia}}
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=== HTML ===
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Barrière, Caroline; Ménard, Pierre André. (2014). &amp;quot;<a href="https://wikipediaquality.com/wiki/Multiword_Noun_Compound_Bracketing_Using_Wikipedia">Multiword Noun Compound Bracketing Using Wikipedia</a>&amp;quot;.DOI: 10.3115/v1/W14-5708.
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[[Category:Scientific works]]

Latest revision as of 07:14, 16 January 2021


Multiword Noun Compound Bracketing Using Wikipedia
Authors
Caroline Barrière
Pierre André Ménard
Publication date
2014
DOI
10.3115/v1/W14-5708
Links
Original Preprint

Multiword Noun Compound Bracketing Using Wikipedia - scientific work related to Wikipedia quality published in 2014, written by Caroline Barrière and Pierre André Ménard.

Overview

This research suggests two contributions in relation to the multiword noun compound bracketing problem: first, demonstrate the usefulness of Wikipedia for the task, and second, present a novel bracketing method relying on a word association model. The intent of the association model is to represent combined evidence about the possibly lexical, relational or coordinate nature of links between all pairs of words within a compound. As for Wikipedia, it is promoted for its encyclopedic nature, meaning it describes terms and named entities, as well as for its size, large enough for corpus-based statistical analysis. Both types of information will be used in measuring evidence about lexical units, noun relations and noun coordinates in order to feed the association model in the bracketing algorithm. Using a gold standard of around 4800 multiword noun compounds, authors show performances of 73% in a strict match evaluation, comparing favourably to results reported in the literature using unsupervised approaches.

Embed

Wikipedia Quality

Barrière, Caroline; Ménard, Pierre André. (2014). "[[Multiword Noun Compound Bracketing Using Wikipedia]]".DOI: 10.3115/v1/W14-5708.

English Wikipedia

{{cite journal |last1=Barrière |first1=Caroline |last2=Ménard |first2=Pierre André |title=Multiword Noun Compound Bracketing Using Wikipedia |date=2014 |doi=10.3115/v1/W14-5708 |url=https://wikipediaquality.com/wiki/Multiword_Noun_Compound_Bracketing_Using_Wikipedia}}

HTML

Barrière, Caroline; Ménard, Pierre André. (2014). &quot;<a href="https://wikipediaquality.com/wiki/Multiword_Noun_Compound_Bracketing_Using_Wikipedia">Multiword Noun Compound Bracketing Using Wikipedia</a>&quot;.DOI: 10.3115/v1/W14-5708.