This thesis aims to give a comprehensive account of some of the most recent methods of a change point estimation. The literature on the change point estimation shows a variety of approaches to deal with this subject. Among them, tests based on the popular CUSUM process, likelihood ratio tests, wild binary segmentation and some of the most recent techniques on the change point estimation in panel data are all covered by this paper. The case of dependent panels is discussed as well. The practical part of the study is focused on application of the wild binary segmentation method on weekly log-returns of the Dow Jones stock index. Firstly, we fit a GARCH model to the analysed time series. We next use the wild binary segmenatation method to dete...
This thesis deals with the problem of modeling an univariate nonstationary time series by a set of ...
In numerous industrial applications, organizations wish to monitor time series data to better unders...
Very long and noisy sequence data arise from biological sciences to social science including high th...
The work presented in this thesis aims to extract signals from complex large-scale data. The contrib...
This paper describes and compares several prominent single and multiple changepoint techniques for t...
This paper studies a panel data regression setting, where a break occurs at a unknown common date. I...
Existing panel data methods remove unobserved individual effects before change point estimation thro...
This paper deals with the detection of change points and structural changes in the time series og st...
<p>This article proposes a class of weighted differences of averages (WDA) statistics to test and es...
The primary goal of this report is to provide a general overview of offline change-point literature ...
Recently there has been a keen interest in the statistical analysis of change point detection and es...
In this paper, we consider the problem of (multiple) changepoint detection in panel data. We propose...
Panel data of our interest consist of a moderate number of panels, while the panels contain a small ...
This article proposes a class of weighted differences of averages (WDA) statistics to test and estim...
We propose a new technique for consistent estimation of the number and locations of the change-point...
This thesis deals with the problem of modeling an univariate nonstationary time series by a set of ...
In numerous industrial applications, organizations wish to monitor time series data to better unders...
Very long and noisy sequence data arise from biological sciences to social science including high th...
The work presented in this thesis aims to extract signals from complex large-scale data. The contrib...
This paper describes and compares several prominent single and multiple changepoint techniques for t...
This paper studies a panel data regression setting, where a break occurs at a unknown common date. I...
Existing panel data methods remove unobserved individual effects before change point estimation thro...
This paper deals with the detection of change points and structural changes in the time series og st...
<p>This article proposes a class of weighted differences of averages (WDA) statistics to test and es...
The primary goal of this report is to provide a general overview of offline change-point literature ...
Recently there has been a keen interest in the statistical analysis of change point detection and es...
In this paper, we consider the problem of (multiple) changepoint detection in panel data. We propose...
Panel data of our interest consist of a moderate number of panels, while the panels contain a small ...
This article proposes a class of weighted differences of averages (WDA) statistics to test and estim...
We propose a new technique for consistent estimation of the number and locations of the change-point...
This thesis deals with the problem of modeling an univariate nonstationary time series by a set of ...
In numerous industrial applications, organizations wish to monitor time series data to better unders...
Very long and noisy sequence data arise from biological sciences to social science including high th...