Title :
Detecting unintentional information leakage in social media news comments
Author :
Yahav, Inbal ; Schwartz, David G. ; Silverman, Gahl
Author_Institution :
Grad. Sch. of Bus., Bar-Ilan Univ., Ramat-Gan, Israel
Abstract :
This paper is concerned with unintentional information leakage (UIL) through social networks, and in particular, Facebook Organizations often use forms of self censorship in order to maintain security. Non-identification of individuals, products, or places is seen as a sufficient means of information protection. A prime example is the replacement of a name with a supposedly non-identifying initial. This has traditionally been effective in obfuscating the identity of military personnel, protected witnesses, minors, victims or suspects who need to be granted a level of protection through anonymity. We challenge the effectiveness of this form of censorship in light of current uses and ongoing developments in Social Networks showing that name-obfits cation mandated by court or military order can be systematically compromised through the unintentional actions of public social network commenters. We propose a qualitative method for recognition and characterization of UIL followed by a quantitative study that automatically detects UIL comments.
Keywords :
data mining; data protection; military computing; social networking (online); Facebook; UIL characterization; UIL recognition; anonymity; automatic UIL comments detection; information protection; military personnel; minors protection; self-censorship; social media news comments; social networks; unintentional information leakage; victims; witnesses protection; Facebook; Media; Organizations; Presses; Semiotics; Text mining; Unintentional information leakage; censorship; comments; online news; privacy; social media; social networks; text mining;
Conference_Titel :
Information Reuse and Integration (IRI), 2014 IEEE 15th International Conference on
DOI :
10.1109/IRI.2014.7051874