A Semantic Conceptualization Using Tagged Bag-of-Concepts for Sentiment Analysis

Sentiment could be expressed implicitly or explicitly in the text. Hence, it is the main challenge for current sentiment analysis (SA) approaches to identify hidden sentiments, other common challenges include false classification of opinion words, ignoring context information, and bad handling of a...

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Main Authors: Yassin S. Mehanna, Massudi Bin Mahmuddin
Format: Article
Language:English
Published: IEEE 2021-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9521534/
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spelling doaj-3d9dfac577c94c25b1c54c15946f3a702021-08-31T23:00:14ZengIEEEIEEE Access2169-35362021-01-01911873611875610.1109/ACCESS.2021.31072379521534A Semantic Conceptualization Using Tagged Bag-of-Concepts for Sentiment AnalysisYassin S. Mehanna0https://orcid.org/0000-0002-0474-7916Massudi Bin Mahmuddin1Internetworks Research Laboratory, School of Computing, Universiti Utara Malaysia, Sintok, MalaysiaInternetworks Research Laboratory, School of Computing, Universiti Utara Malaysia, Sintok, MalaysiaSentiment could be expressed implicitly or explicitly in the text. Hence, it is the main challenge for current sentiment analysis (SA) approaches to identify hidden sentiments, other common challenges include false classification of opinion words, ignoring context information, and bad handling of a short text that arise from the bad interpretation of the text and lack of enough data required for analysis tasks. In this study, a semantic conceptualization method using tagged bag-of-concepts for SA is proposed to detect the correct sentiment towards the actual target entity that considers all affective and conceptual information conveyed in the text with a special focus on the short text. Tagged bag-of-concepts (TBoC) is a novel approach to analyze and decompose text to uncover latent sentiments while preserving all relations and vital information to boost the accuracy of SA. This study answers questions: Does the information provided via TBoC enhance sentiment classification results on different analysis levels? Is building a structure of concepts increases the accuracy of overall sentiment towards specific opinion target? Does TBoC approach enhance SA results for short text messages? The proposed solution has been applied on two datasets from the restaurant domain, sentiment analysis is performed using the TBoCs structure on multiple levels including document, aspect, aspect-category, and topic levels. TBoC method with domain-specific sentiment lexicon showed exceptional performance and outperformed other state-of-the-art NB, SVM, and NN methods, especially for aspect-level SA. The use of TBoC within the semantic conceptualization model that leverages NLP tasks, Ontology, and semantic methods proved its high capabilities for concept extraction while preserving the information about the context, interrelations, and latent feelings.https://ieeexplore.ieee.org/document/9521534/Concept extractionsemantic sentimentsentiment lexiconnatural language processingsentiment analysistext processing
collection DOAJ
language English
format Article
sources DOAJ
author Yassin S. Mehanna
Massudi Bin Mahmuddin
spellingShingle Yassin S. Mehanna
Massudi Bin Mahmuddin
A Semantic Conceptualization Using Tagged Bag-of-Concepts for Sentiment Analysis
IEEE Access
Concept extraction
semantic sentiment
sentiment lexicon
natural language processing
sentiment analysis
text processing
author_facet Yassin S. Mehanna
Massudi Bin Mahmuddin
author_sort Yassin S. Mehanna
title A Semantic Conceptualization Using Tagged Bag-of-Concepts for Sentiment Analysis
title_short A Semantic Conceptualization Using Tagged Bag-of-Concepts for Sentiment Analysis
title_full A Semantic Conceptualization Using Tagged Bag-of-Concepts for Sentiment Analysis
title_fullStr A Semantic Conceptualization Using Tagged Bag-of-Concepts for Sentiment Analysis
title_full_unstemmed A Semantic Conceptualization Using Tagged Bag-of-Concepts for Sentiment Analysis
title_sort semantic conceptualization using tagged bag-of-concepts for sentiment analysis
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2021-01-01
description Sentiment could be expressed implicitly or explicitly in the text. Hence, it is the main challenge for current sentiment analysis (SA) approaches to identify hidden sentiments, other common challenges include false classification of opinion words, ignoring context information, and bad handling of a short text that arise from the bad interpretation of the text and lack of enough data required for analysis tasks. In this study, a semantic conceptualization method using tagged bag-of-concepts for SA is proposed to detect the correct sentiment towards the actual target entity that considers all affective and conceptual information conveyed in the text with a special focus on the short text. Tagged bag-of-concepts (TBoC) is a novel approach to analyze and decompose text to uncover latent sentiments while preserving all relations and vital information to boost the accuracy of SA. This study answers questions: Does the information provided via TBoC enhance sentiment classification results on different analysis levels? Is building a structure of concepts increases the accuracy of overall sentiment towards specific opinion target? Does TBoC approach enhance SA results for short text messages? The proposed solution has been applied on two datasets from the restaurant domain, sentiment analysis is performed using the TBoCs structure on multiple levels including document, aspect, aspect-category, and topic levels. TBoC method with domain-specific sentiment lexicon showed exceptional performance and outperformed other state-of-the-art NB, SVM, and NN methods, especially for aspect-level SA. The use of TBoC within the semantic conceptualization model that leverages NLP tasks, Ontology, and semantic methods proved its high capabilities for concept extraction while preserving the information about the context, interrelations, and latent feelings.
topic Concept extraction
semantic sentiment
sentiment lexicon
natural language processing
sentiment analysis
text processing
url https://ieeexplore.ieee.org/document/9521534/
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