Dynamic Linear Models are a state space model framework based on the Kalman filter. We use this framework to do seasonal adjustments of empirical and artificial data. A simple model and an extended model based on Gibbs sampling are used and the results are compared with the results of a standard seasonal adjustment method. The state space approach is then extended to discuss direct and indirect seasonal adjustments. This is achieved by applying a seasonal level model with no trend and some specific input variances that render different signal-to-noise ratios. This is illustrated for a system consisting of two artificial time series. Relative efficiencies between direct, indirect and multivariate, i.e. optimal, variances are then analyzed. I...
New innovations state space modeling tools, incorporating Box-Cox transformations, Fourier series wi...
The intention of this paper is to define and estimate several classes of models of seasonal behavior...
We describe observation driven time series models for Student-t and EGB2 conditional distributions i...
Dynamic Linear Models are a state space model framework based on the Kalman filter. We use this fram...
This is a brief survey of the existing seasonal adjustment methods. We first discuss the problem of ...
This book explores widely used seasonal adjustment methods and recent developments in real time tren...
This book explores widely used seasonal adjustment methods and recent developments in real time tren...
This chapter reviews the principal methods used by researchers when forecasting seasonal time series...
This is a brief survey of the existing seasonal adjustment methods. We first discuss the problem of ...
The aim of this paper is to develop a model-based seasonal adjustment method which will yield the sa...
This paper examines the implications of treating seasonality as an unobserved component which change...
After demonstrating that any nontrivial technique for seasonally adjusting time series inevitably le...
Summary. Unobserved components time series models decompose a time series into a trend, a season, a ...
We analyse climatic time series with state space models in order to compute the forecast distributio...
The main objective of this paper is to equip the trade policy analyst with an appropriate method of ...
New innovations state space modeling tools, incorporating Box-Cox transformations, Fourier series wi...
The intention of this paper is to define and estimate several classes of models of seasonal behavior...
We describe observation driven time series models for Student-t and EGB2 conditional distributions i...
Dynamic Linear Models are a state space model framework based on the Kalman filter. We use this fram...
This is a brief survey of the existing seasonal adjustment methods. We first discuss the problem of ...
This book explores widely used seasonal adjustment methods and recent developments in real time tren...
This book explores widely used seasonal adjustment methods and recent developments in real time tren...
This chapter reviews the principal methods used by researchers when forecasting seasonal time series...
This is a brief survey of the existing seasonal adjustment methods. We first discuss the problem of ...
The aim of this paper is to develop a model-based seasonal adjustment method which will yield the sa...
This paper examines the implications of treating seasonality as an unobserved component which change...
After demonstrating that any nontrivial technique for seasonally adjusting time series inevitably le...
Summary. Unobserved components time series models decompose a time series into a trend, a season, a ...
We analyse climatic time series with state space models in order to compute the forecast distributio...
The main objective of this paper is to equip the trade policy analyst with an appropriate method of ...
New innovations state space modeling tools, incorporating Box-Cox transformations, Fourier series wi...
The intention of this paper is to define and estimate several classes of models of seasonal behavior...
We describe observation driven time series models for Student-t and EGB2 conditional distributions i...