DocumentCode
1791609
Title
Increasing the veracity of event detection on social media networks through user trust modeling
Author
Bodnar, Todd ; Tucker, C. ; Hopkinson, Kenneth ; Bilen, Sven G.
Author_Institution
Center for Infectious, Disease Dynamics, Pennsylvania State Univ., University Park, PA, USA
fYear
2014
fDate
27-30 Oct. 2014
Firstpage
636
Lastpage
643
Abstract
With the success and ubiquity of large scale, social media networks comes the challenge of assessing the veracity of information shared across them that inform individuals about emerging real-world events and trends. We propose a veracity-assessment model for information dissemination on social media networks that combines natural language processing and machine learning algorithms to mine textual content generated by each user. Large scale social media networks (such as Twitter and Facebook) are considered digital communication platforms, in which information can be quickly and easily exchanged, thereby expanding the breadth of knowledge across the globe. In this paper, four case studies spanning multiple geographic regions, threat scenarios and time frames are investigated, in order to demonstrate how real-world events impact the manner in which information/misinformation is communicated and spread through a social media network. Our results show that metadata associated with each user can provide significant insight on the social media network´s users´ tendency to accurately discuss a topic.
Keywords
data mining; information dissemination; learning (artificial intelligence); meta data; natural language processing; social networking (online); Facebook; Twitter; digital communication platforms; information communication; information dissemination; information exchange; information spread; information veracity assessment model; large-scale social media networks; machine learning algorithms; metadata; misinformation communication; misinformation spread; multiple geographic region spanning; natural language processing; real-world event detection; textual content mining; threat scenarios; time frames; user trust modeling; Accuracy; Educational institutions; Explosions; Measurement; Media; Twitter;
fLanguage
English
Publisher
ieee
Conference_Titel
Big Data (Big Data), 2014 IEEE International Conference on
Conference_Location
Washington, DC
Type
conf
DOI
10.1109/BigData.2014.7004286
Filename
7004286
Link To Document