It is well known that outliers can affect both the estimation of parameters and volatilities when fitting a univariate GARCH-type model. Similar biases and impacts are expected to be found on correlation dynamics in the context of multivariate time series. We study the impact of outliers on the estimation of correlations when fitting multivariate GARCH models and propose a general detection algorithm based on wavelets, that can be applied to a large class of multivariate volatility models. Its effectiveness is evaluated through a Monte Carlo study before it is applied to real data. The method is both effective and reliable, since it detects very few false outliers
In multivariate time series, outlying data may be often observed that do not fit the common pattern....
ABSTRACT: Occurrences of outliers in multivariate time series are unpredictable events which may sev...
Outlier identification is important in many applications of multivariate analysis. Either because th...
It is well known that outliers can affect both the estimation of parameters and volatilities when fi...
Outliers of moderate magnitude cause large changes in financial time series of prices and returns an...
Outliers in financial data can lead to model parameter estimation biases, invalid inferences and poo...
Outliers in financial data can lead to model parameter estimation biases, invalid inferences and po...
This paper considers outliers in multivariate time series analysis. It generalizes four types of dis...
We present a new procedure for detecting multiple additive outliers in GARCH(1,1) models at unknown ...
Abstract: In this paper the concept of local outliers is introduced to volatility modeling. It is de...
The aim of the paper is to go beyond the detection of outliers in multivariate time series, and to f...
The presence of outliers or discrepant observations has a negative impact in time series modelling. ...
The presence of outliers or discrepant observations has a negative impact in time series modelling. ...
In this paper, we detect and correct abnormal returns in 17 French stocks returns and the French ind...
The size and power of tests for smooth structural change are evaluated in the presence of random mea...
In multivariate time series, outlying data may be often observed that do not fit the common pattern....
ABSTRACT: Occurrences of outliers in multivariate time series are unpredictable events which may sev...
Outlier identification is important in many applications of multivariate analysis. Either because th...
It is well known that outliers can affect both the estimation of parameters and volatilities when fi...
Outliers of moderate magnitude cause large changes in financial time series of prices and returns an...
Outliers in financial data can lead to model parameter estimation biases, invalid inferences and poo...
Outliers in financial data can lead to model parameter estimation biases, invalid inferences and po...
This paper considers outliers in multivariate time series analysis. It generalizes four types of dis...
We present a new procedure for detecting multiple additive outliers in GARCH(1,1) models at unknown ...
Abstract: In this paper the concept of local outliers is introduced to volatility modeling. It is de...
The aim of the paper is to go beyond the detection of outliers in multivariate time series, and to f...
The presence of outliers or discrepant observations has a negative impact in time series modelling. ...
The presence of outliers or discrepant observations has a negative impact in time series modelling. ...
In this paper, we detect and correct abnormal returns in 17 French stocks returns and the French ind...
The size and power of tests for smooth structural change are evaluated in the presence of random mea...
In multivariate time series, outlying data may be often observed that do not fit the common pattern....
ABSTRACT: Occurrences of outliers in multivariate time series are unpredictable events which may sev...
Outlier identification is important in many applications of multivariate analysis. Either because th...