In oceanography, there is interest in determining storm season changes for logistical reasons such as equipment maintenance scheduling. In particular, there is interest in capturing the uncertainty associated with these changes in terms of the number and location of them. Such changes are associated with autocovariance changes. This paper proposes a framework to quantify the uncertainty of autocovariance changepoints in time series motivated by this oceanographic application. More specifically, the framework considers time series under the Locally Stationary Wavelet framework, deriving a joint density for scale processes in the raw wavelet periodogram. By embedding this density within a Hidden Markov Model framework, we consider changepoint...
Time series data can often possess complex and dynamic characteristics. Two key statistical properti...
This paper proposes a nonparametric approach to detecting changes in variance within a time series t...
The representation of uncertainty in results is an important aspect of statistical techniques in hyd...
<div><p>In oceanography, there is interest in determining storm season changes for logistical reason...
This article proposes a test to detect changes in general autocovariance structure in nonstationary ...
This article proposes a test to detect changes in general autocovariance structure in nonstationary ...
Changepoint analysis is used to detect changes in variability within GOMOS hindcast time-series for ...
This article studies estimation of a stationary autocovariance structure in the presence of an unkno...
International audienceWe present a method to quantify abrupt changes (or changepoints) in data serie...
International audienceWe present a method to quantify abrupt changes (or changepoints) in data serie...
Climate change is incompatible with the assumption of stationarity. This has lead to a sharp increas...
Time series data can often possess complex and dynamic characteristics. Two key statistical properti...
Climate change is incompatible with the assumption of stationarity. This has lead to a sharp increas...
This paper presents a statistical analysis of structural changes in the Central England temperature ...
Procedures for detecting change points in sequences of correlated observations (e.g., time series) c...
Time series data can often possess complex and dynamic characteristics. Two key statistical properti...
This paper proposes a nonparametric approach to detecting changes in variance within a time series t...
The representation of uncertainty in results is an important aspect of statistical techniques in hyd...
<div><p>In oceanography, there is interest in determining storm season changes for logistical reason...
This article proposes a test to detect changes in general autocovariance structure in nonstationary ...
This article proposes a test to detect changes in general autocovariance structure in nonstationary ...
Changepoint analysis is used to detect changes in variability within GOMOS hindcast time-series for ...
This article studies estimation of a stationary autocovariance structure in the presence of an unkno...
International audienceWe present a method to quantify abrupt changes (or changepoints) in data serie...
International audienceWe present a method to quantify abrupt changes (or changepoints) in data serie...
Climate change is incompatible with the assumption of stationarity. This has lead to a sharp increas...
Time series data can often possess complex and dynamic characteristics. Two key statistical properti...
Climate change is incompatible with the assumption of stationarity. This has lead to a sharp increas...
This paper presents a statistical analysis of structural changes in the Central England temperature ...
Procedures for detecting change points in sequences of correlated observations (e.g., time series) c...
Time series data can often possess complex and dynamic characteristics. Two key statistical properti...
This paper proposes a nonparametric approach to detecting changes in variance within a time series t...
The representation of uncertainty in results is an important aspect of statistical techniques in hyd...