DocumentCode
119497
Title
PEARL: An interactive visual analytic tool for understanding personal emotion style derived from social media
Author
Jian Zhao ; Liang Gou ; Fei Wang ; Zhou, Michelle
fYear
2014
fDate
25-31 Oct. 2014
Firstpage
203
Lastpage
212
Abstract
Hundreds of millions of people leave digital footprints on social media (e.g., Twitter and Facebook). Such data not only disclose a person´s demographics and opinions, but also reveal one´s emotional style. Emotional style captures a person´s patterns of emotions over time, including his overall emotional volatility and resilience. Understanding one´s emotional style can provide great benefits for both individuals and businesses alike, including the support of self-reflection and delivery of individualized customer care. We present PEARL, a timeline-based visual analytic tool that allows users to interactively discover and examine a person´s emotional style derived from this person´s social media text. Compared to other visual text analytic systems, our work offers three unique contributions. First, it supports multi-dimensional emotion analysis from social media text to automatically detect a person´s expressed emotions at different time points and summarize those emotions to reveal the person´s emotional style. Second, it effectively visualizes complex, multi-dimensional emotion analysis results to create a visual emotional profile of an individual, which helps users browse and interpret one´s emotional style. Third, it supports rich visual interactions that allow users to interactively explore and validate emotion analysis results. We have evaluated our work extensively through a series of studies. The results demonstrate the effectiveness of our tool both in emotion analysis from social media and in support of interactive visualization of the emotion analysis results.
Keywords
behavioural sciences computing; data analysis; data visualisation; social networking (online); text analysis; PEARL; digital footprints; emotional resilience; emotional volatility; individualized customer care; interactive visual analytic tool; interactive visualization; multidimensional emotion analysis; person demographics; person opinions; personal emotion style; rich visual interactions; social media text; timeline-based visual analytic tool; visual text analytic systems; Analytical models; Computational modeling; Engines; Media; Mood; Resilience; Visualization; Personal emotion analytics; Twitter; affective and mood modeling; information visualization; social media text;
fLanguage
English
Publisher
ieee
Conference_Titel
Visual Analytics Science and Technology (VAST), 2014 IEEE Conference on
Conference_Location
Paris
Type
conf
DOI
10.1109/VAST.2014.7042496
Filename
7042496
Link To Document