Identifying the change time of multivariate binomial processes for step changes and drifts
Seyed Taghi Niaki and Majid Khedmati
In this paper, a new control chart to monitor multi-binomial processes is first proposed based on a transformation method. Then, the maximum likelihood estimators of change points designed for both step changes and linear-trend disturbances are derived. At the end, the performances of the proposed change-point estimators are evaluated and are compared using some Monte Carlo simulation experiments, considering that the real change type presented in a process are of either a step change or a linear-trend disturbance. According to the results obtained, the change-point estimator designed for step changes outperforms the change-point estimator designed for linear-trend disturbances, when the real change type is a step change. In contrast, the change-point estimator designed for linear-trend disturbances outperforms the change-point estimator designed for step changes, when the real change type is a linear-trend disturbance.
Year of publication: |
2013
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Authors: | Niaki, Seyed Taghi ; Khedmati, Majid |
Published in: |
Journal of industrial engineering international. - Heidelberg : SpringerOpen, ISSN 2251-712X, ZDB-ID 2664907X. - Vol. 9.2013, p. 1-11
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