OCLEP+: One-class Anomaly and Intrusion Detection Using Minimal Length of Emerging Patterns

11/24/2018
by   Guozhu Dong, et al.
0

This paper presents a method called One-class Classification using Length statistics of Emerging Patterns Plus (OCLEP+).

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