We study the problem of intervention effects generating various types of outliers in a linear count time‐series model. This model belongs to the class of observation‐driven models and extends the class of Gaussian linear time‐series models within the exponential family framework. Studies about effects of covariates and interventions for count time‐series models have largely fallen behind, because the underlying process, whose behaviour determines the dynamics of the observed process, is not observed. We suggest a computationally feasible approach to these problems, focusing especially on the detection and estimation of sudden shifts and outliers. We consider three different scenarios, namely the detection of an intervention effect of a know...
A single outlier in a regression model can be detected by the effect of its deletion on the residual...
A single outlier in a regression model can be detected by the effect of its deletion on the residual...
The presence of outliers can result in seriously biased parameter estimates. In order to detect outl...
We study the problem of intervention effects generating various types of outliers in a linear count ...
We study the problem of intervention effects generating various types of outliers in a linear count ...
We study different approaches for modelling intervention effects in time series of counts, focusing ...
We discuss the analysis of count time series following generalized linear models in the presence of...
We discuss the analysis of count time series following generalized linear models in the presence of...
We consider the problem of estimating and detecting outliers in count time series data following a l...
We discuss the analysis of count time series following generalised linear models in the presence of ...
Abstract: We consider the problem of estimating and detecting outliers in count time series data fol...
A single outlier in a regression model can be detected by the effect of its deletion on the residual...
INGARCH models for time series of counts arising, e.g., in epidemiology or finance assume the observ...
Count time series are found in many different applications, e.g. from medicine, finance or industry,...
INGARCH models for time series of counts arising, e.g., in epidemiology assume the observations to ...
A single outlier in a regression model can be detected by the effect of its deletion on the residual...
A single outlier in a regression model can be detected by the effect of its deletion on the residual...
The presence of outliers can result in seriously biased parameter estimates. In order to detect outl...
We study the problem of intervention effects generating various types of outliers in a linear count ...
We study the problem of intervention effects generating various types of outliers in a linear count ...
We study different approaches for modelling intervention effects in time series of counts, focusing ...
We discuss the analysis of count time series following generalized linear models in the presence of...
We discuss the analysis of count time series following generalized linear models in the presence of...
We consider the problem of estimating and detecting outliers in count time series data following a l...
We discuss the analysis of count time series following generalised linear models in the presence of ...
Abstract: We consider the problem of estimating and detecting outliers in count time series data fol...
A single outlier in a regression model can be detected by the effect of its deletion on the residual...
INGARCH models for time series of counts arising, e.g., in epidemiology or finance assume the observ...
Count time series are found in many different applications, e.g. from medicine, finance or industry,...
INGARCH models for time series of counts arising, e.g., in epidemiology assume the observations to ...
A single outlier in a regression model can be detected by the effect of its deletion on the residual...
A single outlier in a regression model can be detected by the effect of its deletion on the residual...
The presence of outliers can result in seriously biased parameter estimates. In order to detect outl...