Abstract

The semantic orientation (also referred to as prior polarity) of a word plays an important role in automatic sentence-level sentiment analysis. Several approaches have been proposed wherein a lexicon of words marked with their polarities is exploited to infer the meaning of sentences. However, relying on prior word polarity may produce inaccurate decisions. This is because we may find negative-sentence sentiments that include words with positive prior polarities or vice versa. In this article, we propose an approach to sentence-level sentiment analysis that exploits knowledge encoded in heavy-weight semantic graphs to assist in discovering the meaning of a word in the context of the sentence where it appears. In this context, we build contextual semantic networks for indexing sentences and expand them with semantically/lexically-relevant terms in an attempt to disambiguate the meanings of word mentions in sentences. In order to verify the effectiveness of the proposed approach, we have developed a prototype system using a real-world dataset that contains 46830 sentiment sentences along with a gold-standard that comprises 10000 movie reviews that are labelled under five sentiment categories (very negative, negative, neutral, positive, very positive). Findings indicate that enriching the semantic graphs of sentiment sentences with NOUN-based synonyms and hypernyms has improved the overall quality of baseline sentiment analysis techniques.

Highlights

  • Microblogging today has become a very popular communication tool among Internet users

  • We study how microblogging can be used for sentiment analysis purposes

  • A recent research has identified it as online word-of-mouth branding (Jansen et al, 2009)

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Summary

Introduction

Microblogging today has become a very popular communication tool among Internet users. Millions of messages are appearing daily in popular web-sites that provide services for microblogging such as Twitter, Tumblr, Facebook. Millions of messages are appearing daily in popular web-sites that provide services for microblogging such as Twitter, Tumblr, Facebook3 Authors of those messages write about their life, share opinions on variety of topics and discuss current issues. As more and more users post about products and services they use, or express their political and religious views, microblogging web-sites become valuable sources of people’s opinions and sentiments. Such data can be efficiently used for marketing or social studies. As the audience of microblogging platforms and services grows everyday, data from these sources can be used in opinion mining and sentiment analysis tasks. Official trailer: http://bit.ly/131Js0 I love the Cheshire Cat

Contributions
Organizations
Related work
Corpus collection
Corpus analysis
Feature extraction
Increasing accuracy
Data and methodology
Results
Conclusion
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