Identifying Online Child Sexual Texts in Dark Web through Machine Learning and Deep Learning Algorithms
In: Conference papers, 2023
Online
Konferenz
Zugriff:
Predators often use the dark web to discuss and share Child Sexual Abuse Material (CSAM) because the dark web provides a degree of anonymity, making it more difficult for law enforcement to track the criminals involved. In most countries, CSAM is considered as forensic evidence of a crime in progress. Processing, identifying and investigating CSAM is often done manually. This is a time-consuming and emotionally challenging task. In this paper, we propose a novel model based on artificial intelligence algorithms to automatically detect CSA text messages in dark web forums. Our algorithms have achieved impressive results in detecting CSAM in dark web, with a recall rate of 89%, a precision rate of 92.3% and an accuracy rate of 87.6%. Moreover, the algorithms can predict the classification of a post in just 1 microsecond and 0.3 milliseconds on standard laptop capabilities. This makes it possible to integrate our model into social network sites or edge devices to for real-time CSAM detection.
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Identifying Online Child Sexual Texts in Dark Web through Machine Learning and Deep Learning Algorithms
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Autor/in / Beteiligte Person: | Ngo, Vuong ; McKeever, Susan ; Thorpe, Christina ; the Safe Online Initiative of End Violence and the Tech Coalition ; Tech Coalition Safe Online Research Fund |
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Zeitschrift: | Conference papers, 2023 |
Veröffentlichung: | Technological University Dublin, 2023 |
Medientyp: | Konferenz |
DOI: | 10.21427/WFN5-RT72 |
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