Optimal Surveillance Based on Exponentially Weighted Moving Averages
Abstract
Statistical surveillance is used to detect an important change in a process as soon as possible after it has occurred. The EWMA method is used in industry, economics and medicine. Three optimality criteria of surveillance are studied. The ARL criterion violates commonly accepted inference principles and the drawbacks are demonstrated. The ED criterion is based on the minimal expected delay from change to detection. The full likelihood ratio method is optimal according to this criterion. Approximations of this method turn out to be modifications of the EWMA method. The approximations lead to a formula for the optimal value of the smoothing parameter of the EWMA statistic. The usefulness of this formula is shown. It is demonstrated that, for EWMA, the minimax criterion agrees well with that of the ED criterion but not with that of the ARL criterion.
University
Göteborg University. School of Business, Economics and Law
Institution
Department of Economics
Publisher
Taylor & Francis
Electronic version
http://dx.doi.org/10.1080/07474940600934821
Journal title
Sequential Analysis
Volume
25
Issue
4
Start page
379
End page
403
Collections
View/ Open
Date
2006Author
Frisén, Marianne
Sonesson, Christian
Keywords
ARL
Expected delay
Minimax
Monitoring
Quality control
Stopping rule
Publication type
article, peer reviewed scientific
Language
eng