AI in Endpoint Security: Predicting and Preventing Insider Threats Through Behavioral Analysis
Abstract
Insider threats are challenging to detect and can have significant security impacts. This paper presents an AI-driven endpoint security solution that monitors user behavior patterns to identify potential insider threats. Using anomaly detection techniques and behavioral analytics, the model flags unusual activities that may indicate data theft, unauthorized access, or sabotage. Our results, drawn from a variety of industry environments, show that the model can accurately predict insider threats, allowing organizations to intervene before a breach occurs. This study demonstrates how AI can provide early warning systems for enhanced internal security.
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References
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