Decision Support and Forecasting Center CEMI RAS

 

 

 

 

Econometrics and Its Applications

 

Retrospective Change-Point Detection and Estimation in Multivariate Linear Models

 

Boris Brodsky, Boris Darkhovsky

 

In this paper the problem of retrospective change-point detection and estimation in multivariate linear models is considered. The lower bounds for the error of change-point estimation are proved in different cases (one change-point: deterministic and stochastic predictors, multiple change-points). A new method for retrospective change-point detection and estimation is proposed and its main performance characteristics (type 1 and type 2 errors, the error of estimation) are studied for dependent observations in situations of deterministic and stochastic predictors and unknown change-points. We prove that this method is asymptotically optimal by the order of convergence of change-point estimates to their true values as the sample size tends to infinity. Results of a simulation study of the main performance characteristics of proposed method in comparison with other well known methods of retrospective change-point detection and estimation are presented.

Keywords: change-point; retrospective detection and estimation; performance
measure; asymptotic optimality

 

      (240 K English Version)

 

 

                                                                     

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Contact information:
Professor Boris Brodsky, CEMI RAS t.: (499)-1291122 fax: (499)1291122 brodsky@cemi.rssi.ru