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Resumen de Classifying Pastebin Content Through the Generation of PasteCC Labeled Dataset

Adrián Riesco Rodríguez, Eduardo Fidalgo Fernández, Mhd Wesam Al Nabki, Francisco Jáñez Martino, Enrique Alegre Gutiérrez

  • Online notepad services allow users to upload and share free text anonymously. Reviewing Pastebin, one of the most popular online notepad services websites, it is possible to find textual content that could be related to illegal activities, such as leaks of personal information or hyperlinks to multimedia files containing child sexual abuse images or videos. An automatic approach to monitor and to detect these activities in such an active and a dynamic environment could be useful for Law Enforcement Agencies to fight against cybercrime. In this work, we present Pastes Content Classification 17K (PasteCC 17K), a dataset of 17640 textual samples crawled from Pastebin, which are classified in 15 categories, being 6 of them suspicious to be related to illegal ones. We used PasteCC 17K to evaluated two well-known text representation techniques, ensembled with three different supervised approaches to classify the pastes of the Pastebin website. We found that the best performance is achieved ensembling TF-IDF encoding with Logistic Regression obtaining an accuracy of 98.63%. The proposed model could assist the authorities in the detection of suspicious content shared in Pastebin.


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