scholarly journals Combined change point estimation in threshold quantile autoregressive models

2020 ◽  
Vol 52 (1) ◽  
pp. 63
Author(s):  
Zhang Liwen ◽  
Cheng Dongpo ◽  
Xue Wenjun ◽  
Yang Tinggan
2020 ◽  
Vol 68 ◽  
pp. 97-122
Author(s):  
Jean-Marc Bardet ◽  
Vincent Brault ◽  
Serguei Dachian ◽  
Farida Enikeeva ◽  
Bruno Saussereau

Recent contributions to change-point detection, segmentation and inference for non-regular models are presented. Various problems are considered including the multiple change-point estimation with adaptive penalty for time series with different dependency structures, estimation of the singularity point in cusp-type models, inference for thresholded autoregressive models, and cross-segmentation of matrices.


Risks ◽  
2017 ◽  
Vol 5 (1) ◽  
pp. 7 ◽  
Author(s):  
Barbora Peštová ◽  
Michal Pešta

Author(s):  
Barbora Peštová ◽  
Michal Pešta

Panel data of our interest consist of a moderate number of panels, while the panels contain a small number of observations. An estimator of common breaks in panel means without a boundary issue for this kind of scenario is proposed. In particular, the novel estimator is able to detect a common break point even when the change happens immediately after the first time point or just before the last observation period. Another advantage of the elaborated change point estimator is that it results in the last observation in situations with no structural breaks. The consistency of the change point estimator in panel data is established. The results are illustrated through a simulation study. As a by-product of the developed estimation technique, a theoretical utilization for correlation structure estimation, hypothesis testing, and bootstrapping in panel data is demonstrated. A practical application to non-life insurance is presented as well.


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