summary:Recursive time series methods are very popular due to their numerical simplicity. Their theoretical background is usually based on Kalman filtering in state space models (mostly in dynamic linear systems). However, in time series practice one must face frequently to outlying values (outliers), which require applying special methods of robust statistics. In the paper a simple robustification of Kalman filter is suggested using a simple truncation of the recursive residuals. Then this concept is applied mainly to various types of exponential smoothing (recursive estimation in Box-Jenkins models with outliers is also mentioned). The methods are demonstrated using simulated data
summary:The problem of asymmetry appears in various aspects of time series modelling. Typical exampl...
In this paper, we propose a robust Kalman filter and smoother for the errors-in-variables (EIV) stat...
A common situation in filtering where classical Kalman filtering does not perform particularly well ...
summary:Recursive time series methods are very popular due to their numerical simplicity. Their theo...
This thesis is concerned with the theoretical and practical aspects of some problems in Bayesian tim...
summary:The paper deals with extensions of exponential smoothing type methods for univariate time se...
This thesis aims at developing robust methods of estimation in order to draw valid inference from co...
Most real time series exhibit certain characteristics that make the choice of model and itspecificat...
Robust versions of the exponential and Holt–Winters smoothing method for forecasting are presented. ...
Robust versions of the exponential and Holt–Winters smoothing method for forecasting are presented. ...
summary:The impact of additive outliers on a performance of the Kalman filter is discussed and less ...
summary:Robust methods similar to exponential smoothing are suggested in this paper. First previous ...
Robust versions of the exponential and Holt-Winters smoothing method for forecasting are presented. ...
Robust versions of the exponential and Holt-Winters smoothing method for forecasting are presented. ...
We provide a framework for robust exponential smoothing. For a class of exponential smoothing varian...
summary:The problem of asymmetry appears in various aspects of time series modelling. Typical exampl...
In this paper, we propose a robust Kalman filter and smoother for the errors-in-variables (EIV) stat...
A common situation in filtering where classical Kalman filtering does not perform particularly well ...
summary:Recursive time series methods are very popular due to their numerical simplicity. Their theo...
This thesis is concerned with the theoretical and practical aspects of some problems in Bayesian tim...
summary:The paper deals with extensions of exponential smoothing type methods for univariate time se...
This thesis aims at developing robust methods of estimation in order to draw valid inference from co...
Most real time series exhibit certain characteristics that make the choice of model and itspecificat...
Robust versions of the exponential and Holt–Winters smoothing method for forecasting are presented. ...
Robust versions of the exponential and Holt–Winters smoothing method for forecasting are presented. ...
summary:The impact of additive outliers on a performance of the Kalman filter is discussed and less ...
summary:Robust methods similar to exponential smoothing are suggested in this paper. First previous ...
Robust versions of the exponential and Holt-Winters smoothing method for forecasting are presented. ...
Robust versions of the exponential and Holt-Winters smoothing method for forecasting are presented. ...
We provide a framework for robust exponential smoothing. For a class of exponential smoothing varian...
summary:The problem of asymmetry appears in various aspects of time series modelling. Typical exampl...
In this paper, we propose a robust Kalman filter and smoother for the errors-in-variables (EIV) stat...
A common situation in filtering where classical Kalman filtering does not perform particularly well ...