HappyMeter: An Automated System for Real-Time Twitter Sentiment Analysis

  • Perotti J
  • Tian T
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Abstract

The paper presents HappyMeter, an automated system for real-time Twitter sentiment analysis. More than 380 million tweets consisting of nearly 30,000 words, almost 6,000 hashtags and over 5,000 user mentioned have been studied. A sentiment model is used to measure the sentiment level of each term in the contiguous United States. The system automatically mines real-time Twitter data and reveals the changing patterns of the public sentiment over an extended period of time. It is possible to compare the public opinions regarding a subject, hashtag or a Twitter user between different states in the U.S. Users may choose to see the overall sentiment level of a term, as well as its sentiment value on a specific day. Real-time results are delivered continuously and visualized through a web-based graphical user interface.

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APA

Perotti, J., & Tian, T. (2017). HappyMeter: An Automated System for Real-Time Twitter Sentiment Analysis. International Journal of Advanced Computer Science and Applications, 8(8). https://doi.org/10.14569/ijacsa.2017.080801

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