We consider the problems of robust estimation and testing for a log-linear model with feedback for the analysis of count time series. We study inference for contaminated data with transient shifts, level shifts and additive outliers. It turns out that the case of additive outliers deserves special attention. We propose a robust method for estimating the regression coefficients in the presence of interventions. The resulting robust estimators are asymptotically normally distributed under some regularity conditions. A robust score type test statistic is also examined. The methodology is applied to real and simulated data
When dealing with situations in which the responses are discrete or show some type of asymmetry, the...
International audienceWe study a general class of quasi-maximum likelihood estimators for observatio...
We discuss the analysis of count time series following generalised linear models in the presence of ...
We study robust estimation of a log-linear Poisson model for count time series analysis. More specif...
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...
Non-linear mixed Poisson autoregressive models are studied for the analysis of count time series. Gi...
We consider a log-linear model for time series of counts. This type of model provides a framework wh...
By starting from a natural class of robust estimators for generalized linear models based on the not...
By starting from a natural class of robust estimators for generalized linear models based on the not...
The framework of this PhD dissertation is the conditional mean count time seriesmodels. We propose t...
International audienceRegularity conditions are given for the consistency of the Poisson quasi-maxim...
The standard model for the analysis of rates is the log-linear model where counts are assumed to fol...
We study a general class of quasi-maximum likelihood estimators for observation-driven time series m...
In this paper we consider a suitable scale adjustment of the estimating function which de.nes a clas...
When dealing with situations in which the responses are discrete or show some type of asymmetry, the...
International audienceWe study a general class of quasi-maximum likelihood estimators for observatio...
We discuss the analysis of count time series following generalised linear models in the presence of ...
We study robust estimation of a log-linear Poisson model for count time series analysis. More specif...
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...
Non-linear mixed Poisson autoregressive models are studied for the analysis of count time series. Gi...
We consider a log-linear model for time series of counts. This type of model provides a framework wh...
By starting from a natural class of robust estimators for generalized linear models based on the not...
By starting from a natural class of robust estimators for generalized linear models based on the not...
The framework of this PhD dissertation is the conditional mean count time seriesmodels. We propose t...
International audienceRegularity conditions are given for the consistency of the Poisson quasi-maxim...
The standard model for the analysis of rates is the log-linear model where counts are assumed to fol...
We study a general class of quasi-maximum likelihood estimators for observation-driven time series m...
In this paper we consider a suitable scale adjustment of the estimating function which de.nes a clas...
When dealing with situations in which the responses are discrete or show some type of asymmetry, the...
International audienceWe study a general class of quasi-maximum likelihood estimators for observatio...
We discuss the analysis of count time series following generalised linear models in the presence of ...