An algorithm and method for sentiment analysis using the text and emoticon
People nowadays use emoticons in their text increasingly in order to express their feelings or recapitulate their words. Earlier machine learning techniques only involve the classification of text, emoticons or images solely where emoticons with text have always been neglected, thus ignored lots of...
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doaj-3b8841f503324b8bab7d1ff3e2111b7c2020-11-25T04:02:50ZengElsevierICT Express2405-95952020-12-0164357360An algorithm and method for sentiment analysis using the text and emoticonMohammad Aman Ullah0Syeda Maliha Marium1Shamim Ara Begum2Nibadita Saha Dipa3Corresponding author.; Department of Computer Science and Engineering, International Islamic University Chittagong (IIUC), Chittagong 4318, BangladeshDepartment of Computer Science and Engineering, International Islamic University Chittagong (IIUC), Chittagong 4318, BangladeshDepartment of Computer Science and Engineering, International Islamic University Chittagong (IIUC), Chittagong 4318, BangladeshDepartment of Computer Science and Engineering, International Islamic University Chittagong (IIUC), Chittagong 4318, BangladeshPeople nowadays use emoticons in their text increasingly in order to express their feelings or recapitulate their words. Earlier machine learning techniques only involve the classification of text, emoticons or images solely where emoticons with text have always been neglected, thus ignored lots of emotions. This research proposed an algorithm and method for sentiment analysis using both text and emoticon. In this work, both modes of data were analyzed in combined and separately with both machine learning and deep learning algorithms for finding sentiments from twitter based airline data using several features such as TF–IDF, Bag of words, N-gram, and emoticon lexicons. This research demonstrates that whenever emoticons are used, their associated sentiment dominates the sentiment conveyed by textual data analysis. Also, deep learning algorithms are found to be better than machine learning algorithms.http://www.sciencedirect.com/science/article/pii/S2405959520300394Machine learningDeep learningClassificationEmoticonText |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Mohammad Aman Ullah Syeda Maliha Marium Shamim Ara Begum Nibadita Saha Dipa |
spellingShingle |
Mohammad Aman Ullah Syeda Maliha Marium Shamim Ara Begum Nibadita Saha Dipa An algorithm and method for sentiment analysis using the text and emoticon ICT Express Machine learning Deep learning Classification Emoticon Text |
author_facet |
Mohammad Aman Ullah Syeda Maliha Marium Shamim Ara Begum Nibadita Saha Dipa |
author_sort |
Mohammad Aman Ullah |
title |
An algorithm and method for sentiment analysis using the text and emoticon |
title_short |
An algorithm and method for sentiment analysis using the text and emoticon |
title_full |
An algorithm and method for sentiment analysis using the text and emoticon |
title_fullStr |
An algorithm and method for sentiment analysis using the text and emoticon |
title_full_unstemmed |
An algorithm and method for sentiment analysis using the text and emoticon |
title_sort |
algorithm and method for sentiment analysis using the text and emoticon |
publisher |
Elsevier |
series |
ICT Express |
issn |
2405-9595 |
publishDate |
2020-12-01 |
description |
People nowadays use emoticons in their text increasingly in order to express their feelings or recapitulate their words. Earlier machine learning techniques only involve the classification of text, emoticons or images solely where emoticons with text have always been neglected, thus ignored lots of emotions. This research proposed an algorithm and method for sentiment analysis using both text and emoticon. In this work, both modes of data were analyzed in combined and separately with both machine learning and deep learning algorithms for finding sentiments from twitter based airline data using several features such as TF–IDF, Bag of words, N-gram, and emoticon lexicons. This research demonstrates that whenever emoticons are used, their associated sentiment dominates the sentiment conveyed by textual data analysis. Also, deep learning algorithms are found to be better than machine learning algorithms. |
topic |
Machine learning Deep learning Classification Emoticon Text |
url |
http://www.sciencedirect.com/science/article/pii/S2405959520300394 |
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