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OpinionFinder: a system for subjectivity analysis

Published:07 October 2005Publication History

ABSTRACT

OpinionFinder is a system that performs subjectivity analysis, automatically identifying when opinions, sentiments, speculations, and other private states are present in text. Specifically, OpinionFinder aims to identify subjective sentences and to mark various aspects of the subjectivity in these sentences, including the source (holder) of the subjectivity and words that are included in phrases expressing positive or negative sentiments.

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  1. OpinionFinder: a system for subjectivity analysis

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      • Published in

        cover image DL Hosted proceedings
        HLT-Demo '05: Proceedings of HLT/EMNLP on Interactive Demonstrations
        October 2005
        45 pages

        Publisher

        Association for Computational Linguistics

        United States

        Publication History

        • Published: 7 October 2005

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        • Article

        Acceptance Rates

        HLT-Demo '05 Paper Acceptance Rate20of31submissions,65%Overall Acceptance Rate240of768submissions,31%

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