CLJan 26, 2016

Sentiment Analysis of Twitter Data: A Survey of Techniques

arXiv:1601.06971v3585 citations
Originality Synthesis-oriented
AI Analysis

It provides a comprehensive overview for researchers and practitioners working on analyzing opinions in unstructured social media data, but it is incremental as it surveys existing methods without introducing new ones.

This survey paper compiles and compares existing techniques for sentiment analysis on Twitter data, including machine learning and lexicon-based approaches, and discusses general challenges and applications.

With the advancement of web technology and its growth, there is a huge volume of data present in the web for internet users and a lot of data is generated too. Internet has become a platform for online learning, exchanging ideas and sharing opinions. Social networking sites like Twitter, Facebook, Google+ are rapidly gaining popularity as they allow people to share and express their views about topics,have discussion with different communities, or post messages across the world. There has been lot of work in the field of sentiment analysis of twitter data. This survey focuses mainly on sentiment analysis of twitter data which is helpful to analyze the information in the tweets where opinions are highly unstructured, heterogeneous and are either positive or negative, or neutral in some cases. In this paper, we provide a survey and a comparative analyses of existing techniques for opinion mining like machine learning and lexicon-based approaches, together with evaluation metrics. Using various machine learning algorithms like Naive Bayes, Max Entropy, and Support Vector Machine, we provide a research on twitter data streams.General challenges and applications of Sentiment Analysis on Twitter are also discussed in this paper.

Foundations

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