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2016 | OriginalPaper | Buchkapitel

Fundamentals of Sentiment Analysis: Concepts and Methodology

verfasst von : A. B. Pawar, M. A. Jawale, D. N. Kyatanavar

Erschienen in: Sentiment Analysis and Ontology Engineering

Verlag: Springer International Publishing

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Abstract

Internet has opened the new doors for information exchange and the growth of social media has created unprecedented opportunities for citizens to publicly raise their opinions, but it has serious bottlenecks when it comes to do analysis of these opinions. Even urgency to gain a real time understanding of citizens concerns has grown very rapidly. Since, the viral nature of social media which is fast and distributed one, some issues get rapidly distributed and unpredictably become important through this word of mouth opinions expressed online which in turn has known as sentiments of the users. The decision makers and people do not yet realized to make sense of this mass communication and interact sensibly with thousands of others with the help of sentiment analysis. To understand thoroughly use of sentiment analysis in today’s business world, this chapter covers the brief about sentiment analysis including introduction of sentiment analysis, early history of sentiment analysis, problems of sentiment analysis, basic concepts of sentiment analysis with mathematical treatment, sentiment and subjectivity classification comprises of opinion mining and summarization, past scenarios of opinion or sentiment collection and their analysis. Methodologies like Sentiment Analysis as Text Classification Problem, Sentiment analysis as Feature Classification with mathematical treatment are explored. Also, Economic consequences of sentiment analysis on individual, society and organization with the help of social media sentiment analysis are provided as supporting component.

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Metadaten
Titel
Fundamentals of Sentiment Analysis: Concepts and Methodology
verfasst von
A. B. Pawar
M. A. Jawale
D. N. Kyatanavar
Copyright-Jahr
2016
DOI
https://doi.org/10.1007/978-3-319-30319-2_2