Publication | Closed Access
Visual sentiment analysis on twitter data streams
74
Citations
3
References
2011
Year
Unknown Venue
EngineeringCommunicationMultimodal Sentiment AnalysisLarge VolumesSentiment AnalysisJournalismText MiningComputational Social ScienceSocial MediaData ScienceVisual Sentiment AnalysisAffective ComputingContent AnalysisVisual AnalyticsSocial Medium MiningKnowledge DiscoveryCustomer SentimentAmusement ParksSocial Medium VisualizationSocial ComputingSocial Medium DataArts
Twitter currently receives about 190 million tweets (small text-based Web posts) a day, in which people share their comments regarding a wide range of topics. A large number of tweets include opinions about products and services. However, with Twitter being a relatively new phenomenon, these tweets are underutilized as a source for evaluating customer sentiment. To explore high-volume twitter data, we introduce three novel time-based visual sentiment analysis techniques: (1) topic-based sentiment analysis that extracts, maps, and measures customer opinions; (2) stream analysis that identifies interesting tweets based on their density, negativity, and influence characteristics; and (3) pixel cell-based sentiment calendars and high density geo maps that visualize large volumes of data in a single view. We applied these techniques to a variety of twitter data, (e.g., movies, amusement parks, and hotels) to show their distribution and patterns, and to identify influential opinions.
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