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COLING
2010

Multilingual Subjectivity: Are More Languages Better?

12 years 11 months ago
Multilingual Subjectivity: Are More Languages Better?
While subjectivity related research in other languages has increased, most of the work focuses on single languages. This paper explores the integration of features originating from multiple languages into a machine learning approach to subjectivity analysis, and aims to show that this enriched feature set provides for more effective modeling for the source as well as the target languages. We show not only that we are able to achieve over 75% macro accuracy in all of the six languages we experiment with, but also that by using features drawn from multiple languages we can construct high-precision meta-classifiers with a precision of over 83%.
Carmen Banea, Rada Mihalcea, Janyce Wiebe
Added 13 May 2011
Updated 13 May 2011
Type Journal
Year 2010
Where COLING
Authors Carmen Banea, Rada Mihalcea, Janyce Wiebe
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