This study investigates the effects of outliers on the estimates of ARIMA model parameters with particular attention given to the performance of two outlier detection and modeling methods targeted at achieving more accurate estimates of the parameters. The two methods considered are: an iterative outlier detection aimed at obtaining the joint estimates of model parameters and outlier effects, and an iterative outlier detection with the effects of outliers removed to obtain an outlier free series, after which a successful ARIMA model is entertained. We explored the daily closing share price returns of Fidelity bank, Union bank of Nigeria, and Unity bank from 03/01/2006 to 24/11/2016, with each series consisting of 2690 observations from the ...
In this Master’s thesis, different models for outlier detection in financial time series are examined....
The problem of identifying the time location and estimating the amplitude of outliers in non-linear ...
We address some potential problems with the existing procedures of outlier detection in time series....
The presence of outliers causes biases in the estimation of ARIMA models. In this work we present a ...
The carry-over effect of biased estimates of ARIMA-GARCH-type models parameters on forecasting accur...
This paper proposed the combination of two statistical techniques for the detection and imputation o...
This study attempts to better understand the impact of an outlier in time series model and the impor...
Outliers can lead to model misspecifications, poor forecasts and invalid inferences. Their identific...
This work investigates outlier detection and modelling in non-Gaussian autoregressive time series mo...
Outliers can lead to model misspecifications, poor forecasts and invalid inferences. Their identific...
Outliers are common place in applied time series analysis and various types of structural changes oc...
This paper considers the application of the methodology to traffic count time series in which both m...
The problem of outlier estimation in time series is addressed. The least squares estimators of addit...
Time series is the way of data analysis and modelling in which present observation is retrieved base...
Most real time series exhibit certain characteristics that make the choice of model and its specific...
In this Master’s thesis, different models for outlier detection in financial time series are examined....
The problem of identifying the time location and estimating the amplitude of outliers in non-linear ...
We address some potential problems with the existing procedures of outlier detection in time series....
The presence of outliers causes biases in the estimation of ARIMA models. In this work we present a ...
The carry-over effect of biased estimates of ARIMA-GARCH-type models parameters on forecasting accur...
This paper proposed the combination of two statistical techniques for the detection and imputation o...
This study attempts to better understand the impact of an outlier in time series model and the impor...
Outliers can lead to model misspecifications, poor forecasts and invalid inferences. Their identific...
This work investigates outlier detection and modelling in non-Gaussian autoregressive time series mo...
Outliers can lead to model misspecifications, poor forecasts and invalid inferences. Their identific...
Outliers are common place in applied time series analysis and various types of structural changes oc...
This paper considers the application of the methodology to traffic count time series in which both m...
The problem of outlier estimation in time series is addressed. The least squares estimators of addit...
Time series is the way of data analysis and modelling in which present observation is retrieved base...
Most real time series exhibit certain characteristics that make the choice of model and its specific...
In this Master’s thesis, different models for outlier detection in financial time series are examined....
The problem of identifying the time location and estimating the amplitude of outliers in non-linear ...
We address some potential problems with the existing procedures of outlier detection in time series....