Most real time series exhibit certain characteristics that make the choice of model and itspecification difficult. The objective of this study is to address the problem of parameter estimation and the accuracy of forecasts k-steps ahead in non-stationary time series with outliers in the context of state-space models. In this paper, three methods for detecting and treating outliers are proposed. We also present a comparative study of the proposed methods using data simulated from a local level model with sample sizes of 50 and 500 and with various combinations of parameters, with a 5% contamination error rate of the observation equation. The results were evaluated in terms of the accuracy of model parameters and the forecasts k-steps ahead, ...
This study investigates the effects of outliers on the estimates of ARIMA model parameters with part...
This paper proposed the combination of two statistical techniques for the detection and imputation o...
The problem of identifying the time location and estimating the amplitude of outliers in non-linear ...
Most real time series exhibit certain characteristics that make the choice of model and its specific...
State space models are powerful and quite flexible tools that allow systems that vary significantly ...
The thesis deals with some of the anomalies,that affect the predictive performance of univariate tim...
This work investigates outlier detection and modelling in non-Gaussian autoregressive time series mo...
The time varying observation recorded in chronological order is called time series. The extreme valu...
summary:Recursive time series methods are very popular due to their numerical simplicity. Their theo...
The occurrence of undetected outliers severely disrupts model building procedures and produces unrel...
This thesis aims at developing robust methods of estimation in order to draw valid inference from co...
The presence of outliers causes biases in the estimation of ARIMA models. In this work we present a ...
We address some potential problems with the existing procedures of outlier detection in time series....
A single outlier in a regression model can be detected by the effect of its deletion on the residual...
Outliers are observations that differ significantly from others that can affect the estimation resul...
This study investigates the effects of outliers on the estimates of ARIMA model parameters with part...
This paper proposed the combination of two statistical techniques for the detection and imputation o...
The problem of identifying the time location and estimating the amplitude of outliers in non-linear ...
Most real time series exhibit certain characteristics that make the choice of model and its specific...
State space models are powerful and quite flexible tools that allow systems that vary significantly ...
The thesis deals with some of the anomalies,that affect the predictive performance of univariate tim...
This work investigates outlier detection and modelling in non-Gaussian autoregressive time series mo...
The time varying observation recorded in chronological order is called time series. The extreme valu...
summary:Recursive time series methods are very popular due to their numerical simplicity. Their theo...
The occurrence of undetected outliers severely disrupts model building procedures and produces unrel...
This thesis aims at developing robust methods of estimation in order to draw valid inference from co...
The presence of outliers causes biases in the estimation of ARIMA models. In this work we present a ...
We address some potential problems with the existing procedures of outlier detection in time series....
A single outlier in a regression model can be detected by the effect of its deletion on the residual...
Outliers are observations that differ significantly from others that can affect the estimation resul...
This study investigates the effects of outliers on the estimates of ARIMA model parameters with part...
This paper proposed the combination of two statistical techniques for the detection and imputation o...
The problem of identifying the time location and estimating the amplitude of outliers in non-linear ...