Statistical approaches to cyber-security involve building realistic
probability models of computer network data. In a data pre-processing phase,
separating automated events from those caused by human activity should improve
statistical model building and enhance anomaly detection capabilities. This
article presents a changepoint detection framework for identifying periodic
subsequences of event times. The opening event of each subsequence can be
interpreted as a human action which then generates an automated, periodic
process. Difficulties arising from the presence of duplicate and missing data
are addressed. The methodology is demonstrated using authentication data from
the computer network of Los Alamos National Laboratory.Comment: 31 pages, 10 Figure