Title
SocialCube: A Text Cube Framework for Analyzing Social Media Data
Abstract
The recent development of social media (e.g., Twitter, Facebook, blogs, etc.) provides an unprecedented opportunity to study human social cultural behaviors. These data sources provide rich structured data (e.g., XML, relational tables, and categorical data) as well as unstructured data (e.g., texts). A significant challenge is to summarize and navigate structured data together with unstructured text data for efficient query and analysis. In this paper we introduce a text cube architecture designed to organize social media data in multiple dimensions and hierarchies for efficient information query and visualization from multiple perspectives. For example, an affective process cube allows the analyst to examine public reaction (e.g., sadness, anger) to a range of social phenomena. The text cube architecture also supports the development of prediction models using the summarized statistics stored in a data cube. For example, models that detect events, such as violent protests in the Egyptian Revolution, can be built using the linguistic features stored in an event data cube. These kinds of models represent higher level of knowledge representation and may help to develop more effective strategies for decision-making based on social media data.
Year
DOI
Venue
2012
10.1109/SocialInformatics.2012.87
SocialInformatics
Keywords
Field
DocType
text cube framework,analyzing social media data,unstructured text data,text cube architecture,categorical data,affective process cube,unstructured data,rich structured data,social media data,data cube,event data cube,data source,data visualisation,data analysis
Data science,Data mining,Data visualization,Knowledge representation and reasoning,Social media,XML,Visualization,Computer science,Unstructured data,Data model,Data cube
Conference
Citations 
PageRank 
References 
7
0.51
9
Authors
8
Name
Order
Citations
PageRank
Xiong Liu1273.69
Kaizhi Tang2324.94
Jeffrey T. Hancock31242106.09
Jiawei Han4430853824.48
Mitchell Song5211.47
Roger Xu611114.71
Vikram Manikonda73011.36
Bob Pokorny8211.80