System Level User Behavior Biometrics using Fisher Features and Gaussian Mixture Models

Security and Privacy Workshops(2013)

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摘要
We propose a machine learning-based method for biometric identification of user behavior, for the purpose of masquerade and insider threat detection. We designed a sensor that captures system-level events such as process creation, registry key changes, and file system actions. These measurements are used to represent a user's unique behavior profile, and are refined through the process of Fisher feature selection to optimize their discriminative significance. Finally, a Gaussian mixture model is trained for each user using these features. We show that this system achieves promising results for user behavior modeling and identification, and surpasses previous works in this area.
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关键词
masquerader detection,gaussian mixture model,user behavior identification,unique behavior profile,system action,fisher features,fisher feature selection,learning (artificial intelligence),insider threat detection,discriminative significance,gaussian mixture models,biometric identification,machine learning-based method,user behavior,user behavior modeling,insider detection,system-level events,system level user behavior biometrics,user unique behavior profile,user behavior biometrics,biometrics (access control),feature extraction,authorisation,gaussian processes,masquerade detection,behavior modeling,system level user behavior,captures system-level event,active authentication,process creation,authentication,computational modeling,learning artificial intelligence,vectors
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