The presence of outliers or discrepant observations has a negative impact in time series modelling. This paper considers the problem of detecting outliers, additive or innovational, single, multiple or in patches, in count time series modelled by first-order Poisson integer-valued autoregressive, PoINAR(1), models. To address this problem, two wavelet-based approaches that allow the identification of the time points of outlier occurrence are proposed. The effectiveness of the proposed methods is illustrated with synthetic as well as with an observed dataset.publishe
This work investigates outlier detection and modelling in non-Gaussian autoregressive time series mo...
We address some potential problems with the existing procedures of outlier detection in time series....
This paper considers outliers in multivariate time series analysis. It generalizes four types of dis...
The presence of outliers or discrepant observations has a negative impact in time series modelling. ...
This work investigates outlier detection and modelling in non-Gaussian autoregressive time series mo...
This paper proposed the combination of two statistical techniques for the detection and imputation o...
We consider the problem of estimating and detecting outliers in count time series data following a l...
Abstract: We consider the problem of estimating and detecting outliers in count time series data fol...
Identification and estimation of outliers in time series is proposed by using empirical likelihood m...
The problem of identifying the time location and estimating the amplitude of outliers in non-linear ...
This paper proposed a procedure to identify patches of outliers in an autoregressive process. The pr...
This paper proposed a procedure to identify patches of outliers in an autoregressive process. The pr...
This paper proposed a procedure to identify patches of outliers in an autoregressive process. The pr...
INGARCH models for time series of counts arising, e.g., in epidemiology assume the observations to ...
Recent advances in technology have brought major breakthroughs in data collection, enabling a large ...
This work investigates outlier detection and modelling in non-Gaussian autoregressive time series mo...
We address some potential problems with the existing procedures of outlier detection in time series....
This paper considers outliers in multivariate time series analysis. It generalizes four types of dis...
The presence of outliers or discrepant observations has a negative impact in time series modelling. ...
This work investigates outlier detection and modelling in non-Gaussian autoregressive time series mo...
This paper proposed the combination of two statistical techniques for the detection and imputation o...
We consider the problem of estimating and detecting outliers in count time series data following a l...
Abstract: We consider the problem of estimating and detecting outliers in count time series data fol...
Identification and estimation of outliers in time series is proposed by using empirical likelihood m...
The problem of identifying the time location and estimating the amplitude of outliers in non-linear ...
This paper proposed a procedure to identify patches of outliers in an autoregressive process. The pr...
This paper proposed a procedure to identify patches of outliers in an autoregressive process. The pr...
This paper proposed a procedure to identify patches of outliers in an autoregressive process. The pr...
INGARCH models for time series of counts arising, e.g., in epidemiology assume the observations to ...
Recent advances in technology have brought major breakthroughs in data collection, enabling a large ...
This work investigates outlier detection and modelling in non-Gaussian autoregressive time series mo...
We address some potential problems with the existing procedures of outlier detection in time series....
This paper considers outliers in multivariate time series analysis. It generalizes four types of dis...