Multilingual Word Sense Disambiguation Using Wikipedia

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Multilingual Word Sense Disambiguation Using Wikipedia
Authors
Bharath Dandala
Bharath Dandala
Rada Mihalcea
Razvan C. Bunescu
Publication date
2013
Links
Original

Multilingual Word Sense Disambiguation Using Wikipedia - scientific work related to Wikipedia quality published in 2013, written by Bharath Dandala, Bharath Dandala, Rada Mihalcea and Razvan C. Bunescu.

Overview

Ambiguity is inherent to human language. In particular, word sense ambiguity is prevalent in all natural languages, with a large number of the words in any given language carrying more than one meaning. Word sense disambiguation is the task of automatically assigning the most appropriate meaning to a polysemous word within a given context. Generally the problem of resolving ambiguity in literature has revolved around the famous quote “you shall know the meaning of the word by the company it keeps.” In this thesis, authors investigate the role of context for resolving ambiguity through three different approaches. Instead of using a predefined monolingual sense inventory such as WordNet, authors use a language-independent framework where the word senses and sense-tagged data are derived automatically from Wikipedia. Using Wikipedia as a source of sense-annotations provides the much needed solution for knowledge acquisition bottleneck. In order to evaluate the viability of Wikipedia based sense-annotations, authors cast the task of disambiguating polysemous nouns as a monolingual classification task and experimented on lexical samples from four different languages (viz. English, German, Italian and Spanish). The experiments confirm that the Wikipedia based sense annotations are reliable and can be used to construct accurate monolingual sense classifiers. It is a long belief that exploiting multiple languages helps in building accurate word sense disambiguation systems. Subsequently, authors developed two approaches that recast the task of disambiguating polysemous nouns as a multilingual classification task. The first approach for multilingual word sense disambiguation attempts to effectively use a machine translation system to leverage two relevant multilingual aspects of the semantics of text. First, the various senses of a target word may be translated into different words, which constitute unique, yet highly salient signal that effectively expand the target word’s feature space. Second, the translated context words themselves embed co-occurrence information that a translation engine gathers from very large parallel corpora. The second approach for multlingual word sense disambiguation attempts to reduce the reliance on the machine translation system during training by using the multilingual knowledge available in Wikipedia through its interlingual links. Finally, the experiments on a lexical sample from four different languages confirm that the multilingual systems perform better than the monolingual system and significantly improve the disambiguation accuracy.

Embed

Wikipedia Quality

Dandala, Bharath; Dandala, Bharath; Mihalcea, Rada; Bunescu, Razvan C.. (2013). "[[Multilingual Word Sense Disambiguation Using Wikipedia]]". University of North Texas.

English Wikipedia

{{cite journal |last1=Dandala |first1=Bharath |last2=Dandala |first2=Bharath |last3=Mihalcea |first3=Rada |last4=Bunescu |first4=Razvan C. |title=Multilingual Word Sense Disambiguation Using Wikipedia |date=2013 |url=https://wikipediaquality.com/wiki/Multilingual_Word_Sense_Disambiguation_Using_Wikipedia |journal=University of North Texas}}

HTML

Dandala, Bharath; Dandala, Bharath; Mihalcea, Rada; Bunescu, Razvan C.. (2013). &quot;<a href="https://wikipediaquality.com/wiki/Multilingual_Word_Sense_Disambiguation_Using_Wikipedia">Multilingual Word Sense Disambiguation Using Wikipedia</a>&quot;. University of North Texas.