Abstract: This paper deals with time series of categorical or ordinal variables, which are com-bined with time varying covariates. The conditional expectations (probabilities) are modelled as a regression model in a GLM-type manner, its parameters are estimated using a (partial) likelihood-approach. Special attention is given to the multivariate and the cumulative logistic regression model, with a regression term defined by a recursive scheme. The main concern is directed at forecasts for such time series. Using an approximation formula for conditional expectations l-step predictors are developed. Bias and mean square errors are estimated by using expansion formulas and by employing Box-Jenkins as well as nonparametric methods. The procedur...
This bachelor thesis is primary focused on introducing models for categorical time series of nominal...
This paper develops a method of adaptive modeling that may be applied to forecast non-stationary tim...
18 pagesWe study two statistical models for short-length categorical (or ordinal) time series. The f...
We are dealing with the prediction of forthcoming outcomes of a categorical time series. We will ass...
We are dealing with the prediction of forthcoming outcomes of a categorical time series. We will ass...
We study regression models for nonstationary categorical time series and their applications, and add...
We are dealing with time series which are measured on an arbitrary scale, e.g. on a categorical or o...
Categorical---or qualitative---time series data with random time-dependent covariates are frequently...
Partial likelihood analysis of two generalized logistic regression models for nominal and ordinal ca...
AbstractPartial likelihood analysis of a general regression model for the analysis of non-stationary...
Partial Likelihood analysis of a general regression model for the analysis of non-stationary categor...
Forecasting with longitudinal data has been rarely studied. Most of the available studies are for co...
A class of dynamic, nonlinear, statistical models is introduced for the analysis of univariate time ...
This dissertation studies several topics in time series modeling. The discussion on seasonal time se...
textabstractThis paper is concerned with time series forecasting in the presence of a large number o...
This bachelor thesis is primary focused on introducing models for categorical time series of nominal...
This paper develops a method of adaptive modeling that may be applied to forecast non-stationary tim...
18 pagesWe study two statistical models for short-length categorical (or ordinal) time series. The f...
We are dealing with the prediction of forthcoming outcomes of a categorical time series. We will ass...
We are dealing with the prediction of forthcoming outcomes of a categorical time series. We will ass...
We study regression models for nonstationary categorical time series and their applications, and add...
We are dealing with time series which are measured on an arbitrary scale, e.g. on a categorical or o...
Categorical---or qualitative---time series data with random time-dependent covariates are frequently...
Partial likelihood analysis of two generalized logistic regression models for nominal and ordinal ca...
AbstractPartial likelihood analysis of a general regression model for the analysis of non-stationary...
Partial Likelihood analysis of a general regression model for the analysis of non-stationary categor...
Forecasting with longitudinal data has been rarely studied. Most of the available studies are for co...
A class of dynamic, nonlinear, statistical models is introduced for the analysis of univariate time ...
This dissertation studies several topics in time series modeling. The discussion on seasonal time se...
textabstractThis paper is concerned with time series forecasting in the presence of a large number o...
This bachelor thesis is primary focused on introducing models for categorical time series of nominal...
This paper develops a method of adaptive modeling that may be applied to forecast non-stationary tim...
18 pagesWe study two statistical models for short-length categorical (or ordinal) time series. The f...