
TL;DR
This paper reviews methods and challenges in analyzing sentiment in Twitter data, highlighting its importance for understanding public opinion across various social and political topics.
Contribution
It provides a comprehensive overview of existing sentiment analysis techniques applied to Twitter, emphasizing recent developments and research challenges.
Findings
Twitter data enables large-scale sentiment analysis.
Sentiment analysis helps understand public opinion on diverse topics.
Challenges include handling noisy data and context understanding.
Abstract
Internet and the proliferation of smart mobile devices have changed the way information is created, shared, and spreads, e.g., microblogs such as Twitter, weblogs such as LiveJournal, social networks such as Facebook, and instant messengers such as Skype and WhatsApp are now commonly used to share thoughts and opinions about anything in the surrounding world. This has resulted in the proliferation of social media content, thus creating new opportunities to study public opinion at a scale that was never possible before. Naturally, this abundance of data has quickly attracted business and research interest from various fields including marketing, political science, and social studies, among many others, which are interested in questions like these: Do people like the new Apple Watch? Do Americans support ObamaCare? How do Scottish feel about the Brexit? Answering these questions requires…
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