Title of article :
Retrospective change detection for binary time series models
Author/Authors :
Fokianos، نويسنده , , Konstantinos and Gombay، نويسنده , , Edit and Hussein، نويسنده , , Abdulkadir، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2014
Abstract :
Detection of changes in health care performance, financial markets, and industrial processes have recently gained momentum due to the increased availability of complex data in real-time. As a consequence, there has been a growing demand in developing statistically rigorous methodologies for change-point detection in various types of data. In many practical situations, the data being monitored for the purpose of detecting changes are autocorrelated binary time series. We propose a new statistical procedure based on the partial likelihood score process for the retrospective detection of change in the coefficients of a logistic regression model with AR(p)-type autocorrelations. We carry out some Monte Carlo experiments to evaluate the power of the detection procedure as well as its probability of false alarm (type I error). We illustrate the utility using data on 30-day mortality rates after cardiac surgery and to data on IBM share transactions.
Keywords :
Binary time series , logistic regression , Maximum partial likelihood estimator , weak convergence
Journal title :
Journal of Statistical Planning and Inference
Journal title :
Journal of Statistical Planning and Inference