Who framed Roger Reindeer? De-censorship of Facebook posts by snippet classification
Fabio Del Vigna, Marinella Petrocchi, Alessandro Tommasi, Cesare, Zavattari, Maurizio Tesconi

TL;DR
This paper presents a text analysis method to identify censored identities in Facebook posts and comments, successfully detecting censored names in over half of the cases in a simulated scenario.
Contribution
It introduces an adaptation of a text classification approach to uncover censored identities using social media snippets, outperforming baseline methods.
Findings
Successfully detects censored names in over 50% of cases
Outperforms baseline methods in identity detection
Operates effectively on short text snippets
Abstract
This paper considers online news censorship and it concentrates on censorship of identities. Obfuscating identities may occur for disparate reasons, from military to judiciary ones. In the majority of cases, this happens to protect individuals from being identified and persecuted by hostile people. However, being the collaborative web characterised by a redundancy of information, it is not unusual that the same fact is reported by multiple sources, which may not apply the same restriction policies in terms of censorship. Also, the proven aptitude of social network users to disclose personal information leads to the phenomenon that comments to news can reveal the data withheld in the news itself. This gives us a mean to figure out who the subject of the censored news is. We propose an adaptation of a text analysis approach to unveil censored identities. The approach is tested on a…
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