Microsoft Corporation
COLLABORATIVE FILTERING ANOMALY DETECTION EXPLAINABILITY
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Abstract:
Cybersecurity anomaly explainability is enhanced, with particular attention to collaborative filter-based anomaly detection. An enhanced system obtains user behavior vectors derived from a trained collaborative filter, computes a similarity measure of user behavior based on a distance between user behavior vectors and a similarity threshold, and automatically produces an explanation of a detected cybersecurity anomaly. The explanation describes a change in user behavior similarity, in human-friendly terms, such as "User X from Sales is now behaving like a network administrator." Each user behavior vector includes latent features, and corresponds to access attempts or other behavior of a user with respect to a monitored computing system. Users may be sorted according to behavioral similarity. Explanations may associate a collaborative filter anomaly detection result with a change in behavior of an identified user or cluster of users, per specified explanation structures. Explanations may include organizational context information such as roles.
Utility
17 Nov 2019
20 May 2021