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MiSAS: a multi-domain feature-level sentiment analysis system on micro-blog

Published:24 November 2017Publication History

ABSTRACT

Big data from micro-blog has been an important access to social groups' psychology, market feedback and so on. Unlike the review corpus which is usually related to the specific object (e.g. a product), the micro-blog content covers the opinion of many domains. It is less useful to extract the fine-grained feature-level opinion target without detect the domain. This paper proposed a systematic feature-level sentiment analysis approach on Micro-blog that recognize data related to the interesting topic automatically. Working with the big micro-blog data we figure out valuable text features to train the opinion targets extraction and sentimental polarity detection models that achieve better multi-domain adaption. We implement the MiSAS system, which crawls micro-blog raw data, outputs opinion targets and orientation summarization on the giving domains, offering valuable analytical tool for practical applications.

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      • Published in

        cover image ACM Other conferences
        ICCIP '17: Proceedings of the 3rd International Conference on Communication and Information Processing
        November 2017
        545 pages
        ISBN:9781450353656
        DOI:10.1145/3162957

        Copyright © 2017 ACM

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        New York, NY, United States

        Publication History

        • Published: 24 November 2017

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