DocumentCode :
1536429
Title :
Selecting Attributes for Sentiment Classification Using Feature Relation Networks
Author :
Abbasi, Ahmed ; France, Stephen ; Zhang, Zhu ; Chen, Hsinchun
Author_Institution :
Sheldon B. Lubar Sch. of Bus., Univ. of Wisconsin - Milwaukee, Milwaukee, WI, USA
Volume :
23
Issue :
3
fYear :
2011
fDate :
3/1/2011 12:00:00 AM
Firstpage :
447
Lastpage :
462
Abstract :
A major concern when incorporating large sets of diverse n-gram features for sentiment classification is the presence of noisy, irrelevant, and redundant attributes. These concerns can often make it difficult to harness the augmented discriminatory potential of extended feature sets. We propose a rule-based multivariate text feature selection method called Feature Relation Network (FRN) that considers semantic information and also leverages the syntactic relationships between n-gram features. FRN is intended to efficiently enable the inclusion of extended sets of heterogeneous n-gram features for enhanced sentiment classification. Experiments were conducted on three online review testbeds in comparison with methods used in prior sentiment classification research. FRN outperformed the comparison univariate, multivariate, and hybrid feature selection methods; it was able to select attributes resulting in significantly better classification accuracy irrespective of the feature subset sizes. Furthermore, by incorporating syntactic information about n-gram relations, FRN is able to select features in a more computationally efficient manner than many multivariate and hybrid techniques.
Keywords :
Internet; pattern classification; FRN; attributes selection; feature relation networks; n-gram features; semantic information; sentiment classification; Natural language processing; affective computing.; machine learning; subspace selection; text mining;
fLanguage :
English
Journal_Title :
Knowledge and Data Engineering, IEEE Transactions on
Publisher :
ieee
ISSN :
1041-4347
Type :
jour
DOI :
10.1109/TKDE.2010.110
Filename :
5510238
Link To Document :
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