DocumentCode :
3717208
Title :
Matisse: A visual analytics system for exploring emotion trends in social media text streams
Author :
Chad A. Steed;Margaret Drouhard;Justin Beaver;Joshua Pyle;Paul L. Bogen
Author_Institution :
Computational Sciences and Engineering Division, Oak Ridge National Laboratory, Oak Ridge, TN 37831
fYear :
2015
Firstpage :
807
Lastpage :
814
Abstract :
Dynamically mining textual information streams to gain real-time situational awareness is especially challenging with social media systems where throughput and velocity properties push the limits of a static analytical approach. In this paper, we describe an interactive visual analytics system, called Matisse, that aids with the discovery and investigation of trends in streaming text. Matisse addresses the challenges inherent to text stream mining through the following technical contributions: (1) robust stream data management, (2) automated sentiment/emotion analytics, (3) interactive coordinated visualizations, and (4) a flexible drill-down interaction scheme that accesses multiple levels of detail. In addition to positive/negative sentiment prediction, Matisse provides fine-grained emotion classification based on Valence, Arousal, and Dominance dimensions and a novel machine learning process. Information from the sentiment/emotion analytics are fused with raw data and summary information to feed temporal, geospatial, term frequency, and scatterplot visualizations using a multi-scale, coordinated interaction model. After describing these techniques, we conclude with a practical case study focused on analyzing the Twitter sample stream during the week of the 2013 Boston Marathon bombings. The case study demonstrates the effectiveness of Matisse at providing guided situational awareness of significant trends in social media streams by orchestrating computational power and human cognition.
Keywords :
"Media","Data visualization","Market research","Twitter","Visual analytics","Geospatial analysis"
Publisher :
ieee
Conference_Titel :
Big Data (Big Data), 2015 IEEE International Conference on
Type :
conf
DOI :
10.1109/BigData.2015.7363826
Filename :
7363826
Link To Document :
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