Partial Likelihood analysis of a general regression model for the analysis of non-stationary categorical time series is presented, taking into account stochastic time dependent covariates. The model links the probabilities of each category to a covariate process through a vector of time invariant parameters. Under mild regularity conditions, we establish good asymptotic properties of the estimator by appealing to martingale theory. Certain diagnostic tools are presented for checking the adequacy of the fit
Here we present a novel method for modeling stationary time series. Our approach is to construct the...
Ordinal categorical time series may be analyzed as censored observations from a suitable latent stoc...
This thesis studies nonparametric estimation techniques for a general regression set–up under very w...
AbstractPartial likelihood analysis of a general regression model for the analysis of non-stationary...
We study regression models for nonstationary categorical time series and their applications, and add...
Partial likelihood analysis of two generalized logistic regression models for nominal and ordinal ca...
Categorical---or qualitative---time series data with random time-dependent covariates are frequently...
Categorical time series are time-sequenced data in which the values at each time point are categorie...
We are dealing with time series which are measured on an arbitrary scale, e.g. on a categorical or o...
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...
In this paper, the problem of time series prediction is studied. A Bayesian procedure based on Gauss...
This bachelor thesis is primary focused on introducing models for categorical time series of nominal...
Abstract: This paper deals with time series of categorical or ordinal variables, which are com-bined...
We develop an estimator for the high-dimensional covariance matrix of a locally stationary process ...
Here we present a novel method for modeling stationary time series. Our approach is to construct the...
Ordinal categorical time series may be analyzed as censored observations from a suitable latent stoc...
This thesis studies nonparametric estimation techniques for a general regression set–up under very w...
AbstractPartial likelihood analysis of a general regression model for the analysis of non-stationary...
We study regression models for nonstationary categorical time series and their applications, and add...
Partial likelihood analysis of two generalized logistic regression models for nominal and ordinal ca...
Categorical---or qualitative---time series data with random time-dependent covariates are frequently...
Categorical time series are time-sequenced data in which the values at each time point are categorie...
We are dealing with time series which are measured on an arbitrary scale, e.g. on a categorical or o...
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...
In this paper, the problem of time series prediction is studied. A Bayesian procedure based on Gauss...
This bachelor thesis is primary focused on introducing models for categorical time series of nominal...
Abstract: This paper deals with time series of categorical or ordinal variables, which are com-bined...
We develop an estimator for the high-dimensional covariance matrix of a locally stationary process ...
Here we present a novel method for modeling stationary time series. Our approach is to construct the...
Ordinal categorical time series may be analyzed as censored observations from a suitable latent stoc...
This thesis studies nonparametric estimation techniques for a general regression set–up under very w...