Title of article :
Probabilistic anomaly detection in distributed computer networks
Author/Authors :
Mark Burgess، نويسنده ,
Issue Information :
دوهفته نامه با شماره پیاپی سال 2006
Abstract :
Distributed host-based anomaly detection has not yet proven practical due to the excessive computational overhead during training and detection. This paper considers an efficient algorithm for detecting resource anomalies in event streams with either Poisson or long tailed arrival processes. A form of distributed, lazy evaluation is presented, which uses a model for human–computer interaction based on two-dimensional time and a geometrically declining memory to yield orders of magnitude improvements in memory requirements. A three-tiered probabilistic method of classifying anomalous behaviour is discussed. This leads to a computationally and memory economic means of finding probable faults amongst the symptoms of network and system behaviour.
Keywords :
Anomaly detection , Machine learning , Data-mining
Journal title :
Science of Computer Programming
Journal title :
Science of Computer Programming