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Recognizing contextual valence shifters in document-level sentiment classification

Sentiment classification is an emerging research field. Due to the rich opinionated web content, people and organizations are interested in knowing others' opinions, so they need an automated tool for analyzing and summarizing these opinions. One of the major tasks of sentiment classification is to...

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Main Author: Morsy, Sara Ahmed
Format: Thesis
Published: AUC Knowledge Fountain 2012
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access_status_str Open Access
author Morsy, Sara Ahmed
author_browse Morsy, Sara Ahmed
author_facet Morsy, Sara Ahmed
author_sort Morsy, Sara Ahmed
collection Thesis
dc_rights_str_mv The author retains all rights with regard to copyright. The author certifies that written permission from the owner(s) of third-party copyrighted matter included in the thesis, dissertation, paper, or record of study has been obtained. The author further certifies that IRB approval has been obtained for this thesis, or that IRB approval is not necessary for this thesis. Insofar as this thesis, dissertation, paper, or record of study is an educational record as defined in the Family Educational Rights and Privacy Act (FERPA) (20 USC 1232g), the author has granted consent to disclosure of it to anyone who requests a copy.
description Sentiment classification is an emerging research field. Due to the rich opinionated web content, people and organizations are interested in knowing others' opinions, so they need an automated tool for analyzing and summarizing these opinions. One of the major tasks of sentiment classification is to classify a document (i.e. a blog, news article or review) as holding an overall positive or negative sentiment. Machine learning approaches have succeeded in achieving better results than semantic orientation approaches in document-level sentiment classification; however, they still need to take linguistic context into account, by making use of the so-called contextual valence shifters. Early research has tried to add sentiment features and contextual valence shifters to the machine learning approach to tackle this problem, but the classifier's performance was low.In this study, we would like to improve the performance of document-level sentiment classification using the machine learning approach by proposing new feature sets that refine the traditional sentiment feature extraction method and take contextual valence shifters into consideration from a different perspective than the earlier research. These feature sets include: 1) a feature set consisting of 16 features for counting different categories of contextual valence shifters (intensifiers, negators and polarity shifters) as well as the frequency of words grouped according to their final (modified) polarity; and 2) another feature set consisting of the frequency of each sentiment word after modifying its prior polarity. We performed several experiments to: 1) compare our proposed feature sets with the traditional sentiment features that count the frequency of each sentiment word while disregarding its prior polarity; 2) compare our proposed feature sets after combining them with stylistic features and n-grams with traditional sentiment features combined with stylistic features and n-grams; and 3) evaluate the effectiveness of our proposed feature sets against stylistic features and n-grams by performing feature selection. The results of all the experiments show a significant improvement over the baselines, in terms of the accuracy, precision and recall, which indicate that our proposed feature sets are effective in document-level sentiment classification.
format Thesis
id oai:fount.aucegypt.edu:etds-2198
institution American University in Cairo (Egypt)
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license_str Other — see source repository
provenance_str_mv Harvested via OAI-PMH from AUC Knowledge Fountain — bepress
publishDate 2012
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spelling oai:fount.aucegypt.edu:etds-2198 Recognizing contextual valence shifters in document-level sentiment classification Morsy, Sara Ahmed Sentiment classification is an emerging research field. Due to the rich opinionated web content, people and organizations are interested in knowing others' opinions, so they need an automated tool for analyzing and summarizing these opinions. One of the major tasks of sentiment classification is to classify a document (i.e. a blog, news article or review) as holding an overall positive or negative sentiment. Machine learning approaches have succeeded in achieving better results than semantic orientation approaches in document-level sentiment classification; however, they still need to take linguistic context into account, by making use of the so-called contextual valence shifters. Early research has tried to add sentiment features and contextual valence shifters to the machine learning approach to tackle this problem, but the classifier's performance was low.In this study, we would like to improve the performance of document-level sentiment classification using the machine learning approach by proposing new feature sets that refine the traditional sentiment feature extraction method and take contextual valence shifters into consideration from a different perspective than the earlier research. These feature sets include: 1) a feature set consisting of 16 features for counting different categories of contextual valence shifters (intensifiers, negators and polarity shifters) as well as the frequency of words grouped according to their final (modified) polarity; and 2) another feature set consisting of the frequency of each sentiment word after modifying its prior polarity. We performed several experiments to: 1) compare our proposed feature sets with the traditional sentiment features that count the frequency of each sentiment word while disregarding its prior polarity; 2) compare our proposed feature sets after combining them with stylistic features and n-grams with traditional sentiment features combined with stylistic features and n-grams; and 3) evaluate the effectiveness of our proposed feature sets against stylistic features and n-grams by performing feature selection. The results of all the experiments show a significant improvement over the baselines, in terms of the accuracy, precision and recall, which indicate that our proposed feature sets are effective in document-level sentiment classification. 2012-02-01T08:00:00Z thesis application/pdf https://fount.aucegypt.edu/etds/1199 https://fount.aucegypt.edu/context/etds/article/2198/viewcontent/ETD_2011_Summer_Sara_Ahmed_Morsy_Thesis.pdf The author retains all rights with regard to copyright. The author certifies that written permission from the owner(s) of third-party copyrighted matter included in the thesis, dissertation, paper, or record of study has been obtained. The author further certifies that IRB approval has been obtained for this thesis, or that IRB approval is not necessary for this thesis. Insofar as this thesis, dissertation, paper, or record of study is an educational record as defined in the Family Educational Rights and Privacy Act (FERPA) (20 USC 1232g), the author has granted consent to disclosure of it to anyone who requests a copy. Theses and Dissertations AUC Knowledge Fountain Sentiment classification Contextual valence shifters
spellingShingle Sentiment classification
Contextual valence shifters
Morsy, Sara Ahmed
Recognizing contextual valence shifters in document-level sentiment classification
title Recognizing contextual valence shifters in document-level sentiment classification
title_full Recognizing contextual valence shifters in document-level sentiment classification
title_fullStr Recognizing contextual valence shifters in document-level sentiment classification
title_full_unstemmed Recognizing contextual valence shifters in document-level sentiment classification
title_short Recognizing contextual valence shifters in document-level sentiment classification
title_sort recognizing contextual valence shifters in document level sentiment classification
topic Sentiment classification
Contextual valence shifters
url https://fount.aucegypt.edu/etds/1199
https://fount.aucegypt.edu/context/etds/article/2198/viewcontent/ETD_2011_Summer_Sara_Ahmed_Morsy_Thesis.pdf
work_keys_str_mv AT morsysaraahmed recognizingcontextualvalenceshiftersindocumentlevelsentimentclassification