2013
DOI: 10.1177/1473871613481691
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Visual sentiment analysis of customer feedback streams using geo-temporal term associations

Abstract: measures, and maps customer feedback; (2) a novel way of determining term associations that identify attributes, verbs, and adjectives frequently occurring together; (3) a self-organizing term association map and a pixel cellbased sentiment calendar to identify co-occurring and influential opinion; and (4) a new geo-based term association technique providing a key term geo map to enable the user to inspect the statistical significance and the sentiment distribution of individual key terms. We have used and eva… Show more

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Cited by 27 publications
(23 citation statements)
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“…There is also a desire to do targeted marketing based on real-time streaming tweet analysis (Ribarsky et al 2014) and to detect geotemporal sentiment patterns, trends and influences in customer feedback streams for live alerts (Hao et al 2013). …”
Section: Data Streams and Real-time Processingmentioning
confidence: 99%
“…There is also a desire to do targeted marketing based on real-time streaming tweet analysis (Ribarsky et al 2014) and to detect geotemporal sentiment patterns, trends and influences in customer feedback streams for live alerts (Hao et al 2013). …”
Section: Data Streams and Real-time Processingmentioning
confidence: 99%
“…Hao et al . [HRJ*13] present four novel visualization techniques for customer feedback analysis: pixel sentiment geo map, key term geo map, pixel‐based sentiment calendar, and self‐organizing term association map. Some other examples for this category include map of opinion clusters introduced in the work by Oelke et al .…”
Section: Sentiment Visualization Techniquesmentioning
confidence: 99%
“…Most of such techniques support details on demand, typically by providing the user with a detailed (text) view for the selected timeline [DQP*12, BRT*14] or map [LWW*16, LSB*16] region. Another option is to display specific analysis details for a selected/hovered item [HRJ*13, TSA14, CCYT15].…”
Section: Sentiment Visualization Techniquesmentioning
confidence: 99%
“…happy, sad, stressed) conveyed by their tweets using text analysis methods. To visually facilitate sentiment and affective analysis, many previous works [15,7,6] abstracted "sentiment" as a unidimensional variable ( i.e. from negative to positive) for visualizations.…”
Section: Introductionmentioning
confidence: 99%