Categorical time series are time-sequenced data in which the values at each time point are categories rather than measurements. A categorical time series is considered stationary if the marginal distribution of the data is constant over the time period for which it was gathered and the correlation between successive values is a function only of their distance from each other and not of their position in the series. However, there are many examples of categorical series which do not fit this rather strong definition of stationarity. Such data show various nonstationary behavior, such as a change in the probability of the occurrence of one or more categories. In this paper, we introduce an algorithm which corrects for nonstationarity in categ...
In time-series analysis of business and economic data (e.g. stock index data; corporate dividend pay...
We present data-dependent learning bounds for the general scenario of non-stationary non-mixing stoc...
In this paper, the problem of time series prediction is studied. A Bayesian procedure based on Gauss...
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...
Most classical methods for the spectral analysis are based on the assumption that the time\ud series...
Partial Likelihood analysis of a general regression model for the analysis of non-stationary categor...
Categorical---or qualitative---time series data with random time-dependent covariates are frequently...
. One of the main mechanisms to generate non-stationary data is that the system's environment i...
Longitudinal data with non-response occur in studies where the same subject is followed over time bu...
Several interesting applications in areas such as neuroscience, economics, finance and seismology ha...
This paper describes a method for finding optimal transformations for analyzing time series by autor...
In time series analysis, most of the models are based on the assumption of covariance stationarity. ...
In the following thesis, we investigate the modeling of time series data with multivariate discrete ...
In many fields of research and application, such as engineering, atmospheric sciences, electricity m...
In time-series analysis of business and economic data (e.g. stock index data; corporate dividend pay...
We present data-dependent learning bounds for the general scenario of non-stationary non-mixing stoc...
In this paper, the problem of time series prediction is studied. A Bayesian procedure based on Gauss...
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...
Most classical methods for the spectral analysis are based on the assumption that the time\ud series...
Partial Likelihood analysis of a general regression model for the analysis of non-stationary categor...
Categorical---or qualitative---time series data with random time-dependent covariates are frequently...
. One of the main mechanisms to generate non-stationary data is that the system's environment i...
Longitudinal data with non-response occur in studies where the same subject is followed over time bu...
Several interesting applications in areas such as neuroscience, economics, finance and seismology ha...
This paper describes a method for finding optimal transformations for analyzing time series by autor...
In time series analysis, most of the models are based on the assumption of covariance stationarity. ...
In the following thesis, we investigate the modeling of time series data with multivariate discrete ...
In many fields of research and application, such as engineering, atmospheric sciences, electricity m...
In time-series analysis of business and economic data (e.g. stock index data; corporate dividend pay...
We present data-dependent learning bounds for the general scenario of non-stationary non-mixing stoc...
In this paper, the problem of time series prediction is studied. A Bayesian procedure based on Gauss...