Phrase-level sentiment polarity classification using rule-based typed dependencies and additional complex phrases consideration

The advent of Web 2.0 has led to an increase in user-generated content on the Web. This has provided an extensive collection of free-style texts with opinion expressions that could influence the decisions and actions of their readers. Providers of such content exert a certain level of influence on t...

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Main Authors: Na, Jin-Cheon, Theng, Yin-Leng, Tan, Luke Kien-Weng, Chang, Kuiyu
Other Authors: School of Computer Engineering
Format: Article
Language:English
Published: 2013
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Online Access:https://hdl.handle.net/10356/107176
http://hdl.handle.net/10220/17911
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-1071762020-05-28T07:18:30Z Phrase-level sentiment polarity classification using rule-based typed dependencies and additional complex phrases consideration Na, Jin-Cheon Theng, Yin-Leng Tan, Luke Kien-Weng Chang, Kuiyu School of Computer Engineering Wee Kim Wee School of Communication and Information DRNTU::Engineering::Computer science and engineering The advent of Web 2.0 has led to an increase in user-generated content on the Web. This has provided an extensive collection of free-style texts with opinion expressions that could influence the decisions and actions of their readers. Providers of such content exert a certain level of influence on the receivers and this is evident from blog sites having effect on their readers’ purchase decisions, political view points, financial planning, and others. By detecting the opinion expressed, we can identify the sentiments on the topics discussed and the influence exerted on the readers. In this paper, we introduce an automatic approach in deriving polarity pattern rules to detect sentiment polarity at the phrase level, and in addition consider the effects of the more complex relationships found between words in sentiment polarity classification. Recent sentiment analysis research has focused on the functional relations of words using typed dependency parsing, providing a refined analysis on the grammar and semantics of textual data. Heuristics are typically used to determine the typed dependency polarity patterns, which may not comprehensively identify all possible rules. We study the use of class sequential rules (CSRs) to automatically learn the typed dependency patterns, and benchmark the performance of CSR against a heuristic method. Preliminary results show CSR leads to further improvements in classification performance achieving over 80% F1 scores in the test cases. In addition, we observe more complex relationships between words that could influence phrase sentiment polarity, and further discuss on possible approaches to handle the effects of these complex relationships. 2013-11-29T04:42:29Z 2019-12-06T22:26:02Z 2013-11-29T04:42:29Z 2019-12-06T22:26:02Z 2012 2012 Journal Article Tan, L. K.-W., Na, J.-C., Theng, Y.-L., & Chang, K. (2012). Phrase-level sentiment polarity classification using rule-based typed dependencies and additional complex phrases consideration. Journal of computer science and technology, 27(3), 650-666. 1000-9000 https://hdl.handle.net/10356/107176 http://hdl.handle.net/10220/17911 10.1007/s11390-012-1251-y en Journal of computer science and technology
institution Nanyang Technological University
building NTU Library
country Singapore
collection DR-NTU
language English
topic DRNTU::Engineering::Computer science and engineering
spellingShingle DRNTU::Engineering::Computer science and engineering
Na, Jin-Cheon
Theng, Yin-Leng
Tan, Luke Kien-Weng
Chang, Kuiyu
Phrase-level sentiment polarity classification using rule-based typed dependencies and additional complex phrases consideration
description The advent of Web 2.0 has led to an increase in user-generated content on the Web. This has provided an extensive collection of free-style texts with opinion expressions that could influence the decisions and actions of their readers. Providers of such content exert a certain level of influence on the receivers and this is evident from blog sites having effect on their readers’ purchase decisions, political view points, financial planning, and others. By detecting the opinion expressed, we can identify the sentiments on the topics discussed and the influence exerted on the readers. In this paper, we introduce an automatic approach in deriving polarity pattern rules to detect sentiment polarity at the phrase level, and in addition consider the effects of the more complex relationships found between words in sentiment polarity classification. Recent sentiment analysis research has focused on the functional relations of words using typed dependency parsing, providing a refined analysis on the grammar and semantics of textual data. Heuristics are typically used to determine the typed dependency polarity patterns, which may not comprehensively identify all possible rules. We study the use of class sequential rules (CSRs) to automatically learn the typed dependency patterns, and benchmark the performance of CSR against a heuristic method. Preliminary results show CSR leads to further improvements in classification performance achieving over 80% F1 scores in the test cases. In addition, we observe more complex relationships between words that could influence phrase sentiment polarity, and further discuss on possible approaches to handle the effects of these complex relationships.
author2 School of Computer Engineering
author_facet School of Computer Engineering
Na, Jin-Cheon
Theng, Yin-Leng
Tan, Luke Kien-Weng
Chang, Kuiyu
format Article
author Na, Jin-Cheon
Theng, Yin-Leng
Tan, Luke Kien-Weng
Chang, Kuiyu
author_sort Na, Jin-Cheon
title Phrase-level sentiment polarity classification using rule-based typed dependencies and additional complex phrases consideration
title_short Phrase-level sentiment polarity classification using rule-based typed dependencies and additional complex phrases consideration
title_full Phrase-level sentiment polarity classification using rule-based typed dependencies and additional complex phrases consideration
title_fullStr Phrase-level sentiment polarity classification using rule-based typed dependencies and additional complex phrases consideration
title_full_unstemmed Phrase-level sentiment polarity classification using rule-based typed dependencies and additional complex phrases consideration
title_sort phrase-level sentiment polarity classification using rule-based typed dependencies and additional complex phrases consideration
publishDate 2013
url https://hdl.handle.net/10356/107176
http://hdl.handle.net/10220/17911
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