New Features for Sentiment Analysis: Do Sentences Matter?
Loading...
Files
Date
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Open Access Color
OpenAIRE Downloads
OpenAIRE Views
Abstract
In this work, we propose and evaluate new features to be used in a word polarity based approach to sentiment classification. In particular, we analyze sentences as the first step before estimating the overall review polarity. We consider different aspects of sentences, such as length, purity, irrealis content, subjectivity, and position within the opinionated text. This analysis is then used to find sentences that may convey better information about the overall review polarity. The TripAdvisor dataset is used to evaluate the effect of sentence level features on polarity classification. Our initial results indicate a small improvement in classification accuracy when using the newly proposed features. However, the benefit of these features is not limited to improving sentiment classification accuracy since sentence level features can be used for other important tasks such as review summarization.
Description
1st International Workshop on Sentiment Discovery from Affective Data 2012, SDAD 2012 - In Conjunction with ECML-PKDD 2012; Bristol; United Kingdom; 28 September 2012 through 28 September 2012
Keywords
Machine learning, Polarity detection, Sentiment analysis, Sentiment classification
Fields of Science
Citation
Gezici, G., Yanıkoğlu, B., Tapucu, D., and Saygın, Y. (2012, September). New features for sentiment analysis: Do sentences matter?. Paper presented at the Proceedings of the 1st International Workshop on Sentiment Discovery from Affective Data (SDAD 2012), Bristol, UK.
WoS Q
Scopus Q
Volume
917
Issue
Start Page
5
End Page
15
