User-level twitter polarity classification using a hybrid approach
Sentiment analysis often bring information and prediction about opinions. For a large corpus of opinions data on Twitter, it is always not simple to analyze due to different personal expression and the grammar level they use. Moreover, Emoji and slangs, abbreviation bring tougher challenge. Today, h...
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sg-ntu-dr.10356-730082023-07-07T17:59:27Z User-level twitter polarity classification using a hybrid approach Chong, Kah Weng Er Meng Joo School of Electrical and Electronic Engineering DRNTU::Engineering::Electrical and electronic engineering Sentiment analysis often bring information and prediction about opinions. For a large corpus of opinions data on Twitter, it is always not simple to analyze due to different personal expression and the grammar level they use. Moreover, Emoji and slangs, abbreviation bring tougher challenge. Today, having a sentiment analysis tools for Twitter data mining is usefulness in terms of business survey, detection of terrorist mind sets, and for better understanding of particular user. Although the analytic result might not be 100% true and accurate, it create a compare platform that consumer can choose between different brands when comes to choice. On the other hand, detection of terrorist mind sets is always a play-safe strategy especially in current world which more and more terrorist attacked was launched unexpectedly. Lastly, to study a person behavior and properties, sentiment analysis bring great achievement. This program use hybrid approach to cover the brevity, lack of context, same word used to express different sentiments by different users. Bachelor of Engineering 2017-12-21T01:41:22Z 2017-12-21T01:41:22Z 2017 Final Year Project (FYP) http://hdl.handle.net/10356/73008 en Nanyang Technological University 68 p. application/pdf |
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DRNTU::Engineering::Electrical and electronic engineering Chong, Kah Weng User-level twitter polarity classification using a hybrid approach |
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Sentiment analysis often bring information and prediction about opinions. For a large corpus of opinions data on Twitter, it is always not simple to analyze due to different personal expression and the grammar level they use. Moreover, Emoji and slangs, abbreviation bring tougher challenge. Today, having a sentiment analysis tools for Twitter data mining is usefulness in terms of business survey, detection of terrorist mind sets, and for better understanding of particular user. Although the analytic result might not be 100% true and accurate, it create a compare platform that consumer can choose between different brands when comes to choice. On the other hand, detection of terrorist mind sets is always a play-safe strategy especially in current world which more and more terrorist attacked was launched unexpectedly. Lastly, to study a person behavior and properties, sentiment analysis bring great achievement. This program use hybrid approach to cover the brevity, lack of context, same word used to express different sentiments by different users. |
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Er Meng Joo |
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Er Meng Joo Chong, Kah Weng |
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Final Year Project |
author |
Chong, Kah Weng |
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Chong, Kah Weng |
title |
User-level twitter polarity classification using a hybrid approach |
title_short |
User-level twitter polarity classification using a hybrid approach |
title_full |
User-level twitter polarity classification using a hybrid approach |
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User-level twitter polarity classification using a hybrid approach |
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User-level twitter polarity classification using a hybrid approach |
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user-level twitter polarity classification using a hybrid approach |
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2017 |
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http://hdl.handle.net/10356/73008 |
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1772826330548666368 |