The occurrence of undetected outliers severely disrupts model building procedures and produces unreliable results. This topic has been widely addressed in the statistical literature. However, little attention has been paid to determine how large an outlier has to be for correct detection of both time and magnitude to safely take place. This issue has been the object of research mainly in geodesy. In this paper, the minimal detectable bias concept is extended to vector time series data, and the risk of accepting an outlier as a clean observation is evaluated according to both the size and power of the statistical tests. This approach seems able to deal with the difficult issues known as masking and swamping. The proposed measure of outlier i...
The presence of outliers causes biases in the estimation of ARIMA models. In this work we present a ...
This paper proposed the combination of two statistical techniques for the detection and imputation o...
The thesis deals with some of the anomalies,that affect the predictive performance of univariate tim...
In this paper, two new outlier generating mechanisms for the detection of outliers in multivariate t...
This work investigates outlier detection and modelling in non-Gaussian autoregressive time series mo...
This paper proposed a procedure to identify patches of outliers in an autoregressive process. The pr...
In this paper we propose a new procedure for detecting additive outliers in a univariate time series...
The concept of outlier detection by statistical hypothesis testing in geodesy is briefly reviewed. T...
The aim of detecting outliers in a multivariate sample can be pursued in different ways. We investig...
[eng] The role of additive outliers in integrated time series has attracted some attention recently ...
The aim of detecting outliers in a multivariate sample can be pursued in different ways. We investig...
This paper considers outliers in multivariate time series analysis. It generalizes four types of dis...
Outlier detection has relevance in many modern day contexts, including health care, engineering, dat...
This paper compares the tractability of four discordancy statistics for modelling outliers based on ...
The detection of multiple outliers can be interpreted as a model selection problem. Models that can ...
The presence of outliers causes biases in the estimation of ARIMA models. In this work we present a ...
This paper proposed the combination of two statistical techniques for the detection and imputation o...
The thesis deals with some of the anomalies,that affect the predictive performance of univariate tim...
In this paper, two new outlier generating mechanisms for the detection of outliers in multivariate t...
This work investigates outlier detection and modelling in non-Gaussian autoregressive time series mo...
This paper proposed a procedure to identify patches of outliers in an autoregressive process. The pr...
In this paper we propose a new procedure for detecting additive outliers in a univariate time series...
The concept of outlier detection by statistical hypothesis testing in geodesy is briefly reviewed. T...
The aim of detecting outliers in a multivariate sample can be pursued in different ways. We investig...
[eng] The role of additive outliers in integrated time series has attracted some attention recently ...
The aim of detecting outliers in a multivariate sample can be pursued in different ways. We investig...
This paper considers outliers in multivariate time series analysis. It generalizes four types of dis...
Outlier detection has relevance in many modern day contexts, including health care, engineering, dat...
This paper compares the tractability of four discordancy statistics for modelling outliers based on ...
The detection of multiple outliers can be interpreted as a model selection problem. Models that can ...
The presence of outliers causes biases in the estimation of ARIMA models. In this work we present a ...
This paper proposed the combination of two statistical techniques for the detection and imputation o...
The thesis deals with some of the anomalies,that affect the predictive performance of univariate tim...