We propose a location-adaptive self-normalization (SN) based test for change points in time series. The SN technique has been extensively used in change-point detection for its capability to avoid direct estimation of nuisance parameters. However, we find that the power of the SN-based test is susceptible to the location of the break and may suffer from a severe power loss, especially when the change occurs at the early or late stage of the sequence. This phenomenon is essentially caused by the unbalance of the data used before and after the change point when one is building a test statistic based on the cumulative sum (CUSUM) process. Hence, we consider leaving out the samples far away from the potential locations of change points and prop...
A popular self-normalization (SN) approach in time series analysis uses the variance of a partial su...
Statistical inference in time series analysis has been an important subject in various fields includ...
International audienceGiven a times series Y in R n , with a piece-wise contant mean and independent...
<p>We propose a new self-normalized method for testing change points in the time series setting. Sel...
We propose a novel and unified framework for change-point estimation in multivariate time series. Th...
We propose a general framework to construct self-normalized multiple-change-point tests with time se...
Detecting change-points in data is challenging because of the range of possible types of change and ...
Most of the literature on change-point analysis by means of hypothesis testing considers hypotheses...
A large class of sequential change point tests are based on estimating functions where estimation is...
Most of the literature on change-point analysis by means of hypothesis testing considers hypotheses ...
Most of the literature on change-point analysis by means of hypothesis testing considers hypotheses ...
A popular self-normalization (SN) approach in time series analysis uses the variance of a partial su...
International audienceGiven a times series Y in R n , with a piece-wise contant mean and independent...
A popular self-normalization (SN) approach in time series analysis uses the variance of a partial su...
A popular self-normalization (SN) approach in time series analysis uses the variance of a partial su...
A popular self-normalization (SN) approach in time series analysis uses the variance of a partial su...
Statistical inference in time series analysis has been an important subject in various fields includ...
International audienceGiven a times series Y in R n , with a piece-wise contant mean and independent...
<p>We propose a new self-normalized method for testing change points in the time series setting. Sel...
We propose a novel and unified framework for change-point estimation in multivariate time series. Th...
We propose a general framework to construct self-normalized multiple-change-point tests with time se...
Detecting change-points in data is challenging because of the range of possible types of change and ...
Most of the literature on change-point analysis by means of hypothesis testing considers hypotheses...
A large class of sequential change point tests are based on estimating functions where estimation is...
Most of the literature on change-point analysis by means of hypothesis testing considers hypotheses ...
Most of the literature on change-point analysis by means of hypothesis testing considers hypotheses ...
A popular self-normalization (SN) approach in time series analysis uses the variance of a partial su...
International audienceGiven a times series Y in R n , with a piece-wise contant mean and independent...
A popular self-normalization (SN) approach in time series analysis uses the variance of a partial su...
A popular self-normalization (SN) approach in time series analysis uses the variance of a partial su...
A popular self-normalization (SN) approach in time series analysis uses the variance of a partial su...
Statistical inference in time series analysis has been an important subject in various fields includ...
International audienceGiven a times series Y in R n , with a piece-wise contant mean and independent...