Abstract
In the dynamic financial market, the change of financial asset prices is always described as a certain random events which result in abrupt changes. The random time when the event occurs is called a change point. As the event happens, in order to mitigate property damage the government should increase the macro-control ability. As a result, we need to find a valid statistical model for change point problem to solve it effectively. This paper proposes a semiparametric model for detecting the change points. According to the research of empirical studies and hypothesis testing we acquire the maximum likelihood estimators of change points. We use the loglikelihood ratio to test the multiple change points. We obtain some asymptotic results. The estimated change point is more efficient than the non parametric one through simulation experiments. Real data application illustrates the usage of the model.
Acknowledgments
The authors declare no conflicts of interest. We would like to thank Professor Daren YU for his constructive comments on this article. We also would like to thank the referees very much for reviewing our work and many useful comments and suggestions.
Funding
This research was partly financed by NSFC [grant number 7135000 and National Social Science Fund [grant number 13&ZD166].