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United we stand: improving sentiment analysis by joining machine learning and rule based methods


Rentoumi, V; Petrakis, S; Klenner, M; Vouros, G A; Karkaletsis, V (2010). United we stand: improving sentiment analysis by joining machine learning and rule based methods. In: 7th International Conference on Language Resources and Evaluation (LREC 2010), Malta, 19 May 2010 - 21 May 2010.

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Item Type:Conference or Workshop Item (Paper), refereed, original work
Communities & Collections:06 Faculty of Arts > Institute of Computational Linguistics
Dewey Decimal Classification:410 Linguistics
000 Computer science, knowledge & systems
Scopus Subject Areas:Social Sciences & Humanities > Education
Social Sciences & Humanities > Library and Information Sciences
Social Sciences & Humanities > Linguistics and Language
Social Sciences & Humanities > Language and Linguistics
Language:English
Event End Date:21 May 2010
Deposited On:24 Feb 2011 16:52
Last Modified:04 Mar 2020 23:26
OA Status:Green

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