In multivariate time series, outlying data may be often observed that do not fit the common pattern. Occurrences of outliers are unpredictable events that may severely distort the analysis of the multivariate time series. For instance, model building, seasonality assessment, and forecasting may be seriously affected by undetected outliers. The structure dependence of the multivariate time series gives rise to the well-known smearing and masking phenomena that prevent using most outliers' identification techniques. It may be noticed, however, that a convenient way for representing multiple outliers consists of superimposing a deterministic disturbance to a gaussian multivariate time series. Then outliers may be modeled as nongaussian time se...
In this paper, two new outlier generating mechanisms for the detection of outliers in multivariate t...
Singular Spectrum Analysis (SSA) is a powerful non-parametric time series technique which is finding...
This paper proposed the combination of two statistical techniques for the detection and imputation o...
ABSTRACT: Occurrences of outliers in multivariate time series are unpredictable events which may sev...
This paper considers outliers in multivariate time series analysis. It generalizes four types of dis...
Abstract: The recent developments by considering a rather unexpected application of the theory of In...
Outlier identification is important in many applications of multivariate analysis. Either because th...
Dynamic factor models have a wide range of applications in econometrics and applied economics. The b...
This article uses Projection Pursuit methods to develop a procedure for detecting outliers in a mult...
The aim of the paper is to go beyond the detection of outliers in multivariate time series, and to f...
This article uses Projection Pursuit methods to develop a procedure for detecting outliers in a mult...
In this paper we present a "model free' method of outlier detection for Gaussian time series by usin...
This study attempts to better understand the impact of an outlier in time series model and the impor...
Outlier identification is important in many applications of multivariate analysis. Either because th...
Abstract In this article we use meta-heuristic meth-ods to detect additive outliers in multivariate ...
In this paper, two new outlier generating mechanisms for the detection of outliers in multivariate t...
Singular Spectrum Analysis (SSA) is a powerful non-parametric time series technique which is finding...
This paper proposed the combination of two statistical techniques for the detection and imputation o...
ABSTRACT: Occurrences of outliers in multivariate time series are unpredictable events which may sev...
This paper considers outliers in multivariate time series analysis. It generalizes four types of dis...
Abstract: The recent developments by considering a rather unexpected application of the theory of In...
Outlier identification is important in many applications of multivariate analysis. Either because th...
Dynamic factor models have a wide range of applications in econometrics and applied economics. The b...
This article uses Projection Pursuit methods to develop a procedure for detecting outliers in a mult...
The aim of the paper is to go beyond the detection of outliers in multivariate time series, and to f...
This article uses Projection Pursuit methods to develop a procedure for detecting outliers in a mult...
In this paper we present a "model free' method of outlier detection for Gaussian time series by usin...
This study attempts to better understand the impact of an outlier in time series model and the impor...
Outlier identification is important in many applications of multivariate analysis. Either because th...
Abstract In this article we use meta-heuristic meth-ods to detect additive outliers in multivariate ...
In this paper, two new outlier generating mechanisms for the detection of outliers in multivariate t...
Singular Spectrum Analysis (SSA) is a powerful non-parametric time series technique which is finding...
This paper proposed the combination of two statistical techniques for the detection and imputation o...