Bilingual Sentiment Analysis of Spanglish Tweets
<p> Sentiment Analysis has been researched in a variety of contexts but in this thesis, the focus is on sentiment analysis in Twitter, which poses its own unique challenges such as the use of slang, abbreviations, emoticons, hashtags, and user mentions. The 140-character restriction on the len...
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ndltd-PROQUEST-oai-pqdtoai.proquest.com-106105082017-06-29T16:24:59Z Bilingual Sentiment Analysis of Spanglish Tweets Serrano, Melissa Computer science <p> Sentiment Analysis has been researched in a variety of contexts but in this thesis, the focus is on sentiment analysis in Twitter, which poses its own unique challenges such as the use of slang, abbreviations, emoticons, hashtags, and user mentions. The 140-character restriction on the length of tweets can also lead to text that is difficult even for a human to determine its sentiment. Specifically, this study will analyze sentiment analysis of bilingual (U.S. English and Spanish language) Tweets. The hypothesis here is that Bilingual sentiment analysis is more accurate than sentiment analysis in a single language (English or Spanish) when analyzing bilingual tweets. In general, currently sentiment analysis in bilingual tweets is done against an English dictionary. For each of the test cases in this thesis’ experiment we will use the Python NLTK sentiment package.</p> Florida Atlantic University 2017-06-24 00:00:00.0 thesis http://pqdtopen.proquest.com/#viewpdf?dispub=10610508 EN |
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EN |
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Computer science Serrano, Melissa Bilingual Sentiment Analysis of Spanglish Tweets |
description |
<p> Sentiment Analysis has been researched in a variety of contexts but in this thesis, the focus is on sentiment analysis in Twitter, which poses its own unique challenges such as the use of slang, abbreviations, emoticons, hashtags, and user mentions. The 140-character restriction on the length of tweets can also lead to text that is difficult even for a human to determine its sentiment. Specifically, this study will analyze sentiment analysis of bilingual (U.S. English and Spanish language) Tweets. The hypothesis here is that Bilingual sentiment analysis is more accurate than sentiment analysis in a single language (English or Spanish) when analyzing bilingual tweets. In general, currently sentiment analysis in bilingual tweets is done against an English dictionary. For each of the test cases in this thesis’ experiment we will use the Python NLTK sentiment package.</p> |
author |
Serrano, Melissa |
author_facet |
Serrano, Melissa |
author_sort |
Serrano, Melissa |
title |
Bilingual Sentiment Analysis of Spanglish Tweets |
title_short |
Bilingual Sentiment Analysis of Spanglish Tweets |
title_full |
Bilingual Sentiment Analysis of Spanglish Tweets |
title_fullStr |
Bilingual Sentiment Analysis of Spanglish Tweets |
title_full_unstemmed |
Bilingual Sentiment Analysis of Spanglish Tweets |
title_sort |
bilingual sentiment analysis of spanglish tweets |
publisher |
Florida Atlantic University |
publishDate |
2017 |
url |
http://pqdtopen.proquest.com/#viewpdf?dispub=10610508 |
work_keys_str_mv |
AT serranomelissa bilingualsentimentanalysisofspanglishtweets |
_version_ |
1718480068953505792 |