Many sequentially observed functional data objects are available only at the times of certain events. For example, the trajectory of stock prices of companies after their initial public offering (IPO) can be observed when the offering occurs, and the resulting data may be affected by changing circumstances. It is of interest to investigate whether the mean behaviour of such functions is stable over time, and if not, to estimate the times at which apparent changes occur. Since the frequency of events may fluctuates over time, we propose a change point analysis that has two steps. In the first step, we segment the series into segments in which the frequency of events is approximately homogeneous using a new binary segmentation procedure for e...
The event study is one of the most powerful techniques for studying market efficiency. Over a period...
In this paper, Bayesian online inference in models of data series are constructed by change-points a...
In this paper, we demonstrate the power of functional data models for a statistical analysis of stim...
This thesis is focussed on two areas of statistics, change-point analysis and functional data analys...
dissertationThis dissertation aims to develop statistical methods for change point detection in func...
In this thesis we investigate the case of monitoring of stocks havingjust been introduced for publ...
AbstractThe functional autoregressive process has become a useful tool in the analysis of functional...
Detecting changes in an incoming data flow is immensely crucial for understanding inherent dependenc...
We develop and study change point detection and estimation procedures for the covariance kernel of f...
In numerous industrial applications, organizations wish to monitor time series data to better unders...
Nous étudions les tests CUSUM historiques et séquentiels pour des séries dépendantes avec des applic...
Many systems of interacting elements can be conceptualized as networks, where network nodes represen...
This paper deals with the detection of change points and structural changes in the time series og st...
The thesis provides novel procedures in the statistical field of change point detection in time seri...
In the analysis of sequential data, the detection of abrupt changes is important in predicting futur...
The event study is one of the most powerful techniques for studying market efficiency. Over a period...
In this paper, Bayesian online inference in models of data series are constructed by change-points a...
In this paper, we demonstrate the power of functional data models for a statistical analysis of stim...
This thesis is focussed on two areas of statistics, change-point analysis and functional data analys...
dissertationThis dissertation aims to develop statistical methods for change point detection in func...
In this thesis we investigate the case of monitoring of stocks havingjust been introduced for publ...
AbstractThe functional autoregressive process has become a useful tool in the analysis of functional...
Detecting changes in an incoming data flow is immensely crucial for understanding inherent dependenc...
We develop and study change point detection and estimation procedures for the covariance kernel of f...
In numerous industrial applications, organizations wish to monitor time series data to better unders...
Nous étudions les tests CUSUM historiques et séquentiels pour des séries dépendantes avec des applic...
Many systems of interacting elements can be conceptualized as networks, where network nodes represen...
This paper deals with the detection of change points and structural changes in the time series og st...
The thesis provides novel procedures in the statistical field of change point detection in time seri...
In the analysis of sequential data, the detection of abrupt changes is important in predicting futur...
The event study is one of the most powerful techniques for studying market efficiency. Over a period...
In this paper, Bayesian online inference in models of data series are constructed by change-points a...
In this paper, we demonstrate the power of functional data models for a statistical analysis of stim...