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Sentiment classification improvement using semantically enriched information

Published: 23 September 2019 Publication History

Abstract

The emergence of new and challenging text mining applications is demanding the development of novel text processing and knowledge extraction techniques. One important challenge of text mining is the proper treatment of text meaning, which may be addressed by incorporating different types of information (e.g., syntactic or semantic) into the text representation model. Sentiment classification is one of the challenging text mining applications. It may be considered more complex than the traditional topic classification since, although sentiment words are important, they may not be enough to correctly classify the sentiment expressed in a document. In this work, we propose a novel and straightforward method to improve sentiment classification performance, with the use of semantically enriched information derived from domain expressions. We also propose a superior scheme for generating these expressions. We conducted an experimental evaluation applying different classification algorithms to three datasets composed by reviews of different products and services. The results indicate that the proposed method enables the improvement of classification accuracy when dealing with reviews of a narrow domain.

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Cited By

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  • (2023)Comparative Analysis of Book Recommendation System Based on User Reviews Using Hybrid MethodsDeep Sciences for Computing and Communications10.1007/978-3-031-27622-4_1(3-15)Online publication date: 19-Mar-2023

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    cover image ACM Conferences
    DocEng '19: Proceedings of the ACM Symposium on Document Engineering 2019
    September 2019
    254 pages
    ISBN:9781450368872
    DOI:10.1145/3342558
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    Published: 23 September 2019

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    Author Tags

    1. Sentiment analysis
    2. Text classification
    3. Text semantics

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    DocEng '19: ACM Symposium on Document Engineering 2019
    September 23 - 26, 2019
    Berlin, Germany

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    DocEng '19 Paper Acceptance Rate 30 of 77 submissions, 39%;
    Overall Acceptance Rate 194 of 564 submissions, 34%

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    • (2023)Comparative Analysis of Book Recommendation System Based on User Reviews Using Hybrid MethodsDeep Sciences for Computing and Communications10.1007/978-3-031-27622-4_1(3-15)Online publication date: 19-Mar-2023

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