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Inicio  /  Information  /  Vol: 12 Par: 7 (2021)  /  Artículo
ARTÍCULO
TITULO

Change Point Detection in Terrorism-Related Online Content Using Deep Learning Derived Indicators

Ourania Theodosiadou    
Kyriaki Pantelidou    
Nikolaos Bastas    
Despoina Chatzakou    
Theodora Tsikrika    
Stefanos Vrochidis and Ioannis Kompatsiaris    

Resumen

Given the increasing occurrence of deviant activities in online platforms, it is of paramount importance to develop methods and tools that allow in-depth analysis and understanding to then develop effective countermeasures. This work proposes a framework towards detecting statistically significant change points in terrorism-related time series, which may indicate the occurrence of events to be paid attention to. These change points may reflect changes in the attitude towards and/or engagement with terrorism-related activities and events, possibly signifying, for instance, an escalation in the radicalization process. In particular, the proposed framework involves: (i) classification of online textual data as terrorism- and hate speech-related, which can be considered as indicators of a potential criminal or terrorist activity; and (ii) change point analysis in the time series generated by these data. The use of change point detection (CPD) algorithms in the produced time series of the aforementioned indicators?either in a univariate or two-dimensional case?can lead to the estimation of statistically significant changes in their structural behavior at certain time locations. To evaluate the proposed framework, we apply it on a publicly available dataset related to jihadist forums. Finally, topic detection on the estimated change points is implemented to further assess its effectiveness.