This article is concerned with detecting additive outliers using extreme value methods. The test recently proposed for use with possibly non-stationary time series by Perron and Rodriguez [Journal of Time Series Analysis (2003) vol. 24, pp. 193-220], is, as they point out, extremely sensitive to departures from their assumption of Gaussianity, even asymptotically. As an alternative, we investigate the robustness to distributional form of a test based on weighted spacings of the sample order statistics. Difficulties arising from uncertainty about the number of potential outliers are discussed, and a simple algorithm requiring minimal distributional assumptions is proposed and its performance evaluated. The new algorithm has dramatically lowe...
Abstract: Zerbet and Nikulin presented the new statistic Z k for detecting outliers in exponential d...
We revisit the outlier hypothesis testing framework of Li \emph{et al.} (TIT 2014) and derive fundam...
In this paper we present a "model free' method of outlier detection for Gaussian time series by usin...
Abstract. This article is concerned with detecting additive outliers using extreme value methods. Th...
This article is concerned with detecting additive outliers using extreme value methods. The test rec...
We introduce asymptotic parameter-free hypothesis tests based on extreme value theory to detect outl...
Whether an extreme observation is an outlier or not depends strongly on the corresponding tail behav...
This paper proposes several test statistics to detect additive or innovative outliers in adaptive fu...
In this paper we propose a new procedure for detecting additive outliers in a univariate time series...
This paper analyzes the issue of testing for the presence of additive outliers when the variable stu...
An outlier is an observation that appears to deviate markedly from other observations in the sample ...
Given a data set arising from a series of observations, an outlier is a value that deviates substant...
This paper compares the tractability of four discordancy statistics for modelling outliers based on ...
In this paper we propose a method for correctly detecting outliers based on a new technique develope...
[eng] The role of additive outliers in integrated time series has attracted some attention recently ...
Abstract: Zerbet and Nikulin presented the new statistic Z k for detecting outliers in exponential d...
We revisit the outlier hypothesis testing framework of Li \emph{et al.} (TIT 2014) and derive fundam...
In this paper we present a "model free' method of outlier detection for Gaussian time series by usin...
Abstract. This article is concerned with detecting additive outliers using extreme value methods. Th...
This article is concerned with detecting additive outliers using extreme value methods. The test rec...
We introduce asymptotic parameter-free hypothesis tests based on extreme value theory to detect outl...
Whether an extreme observation is an outlier or not depends strongly on the corresponding tail behav...
This paper proposes several test statistics to detect additive or innovative outliers in adaptive fu...
In this paper we propose a new procedure for detecting additive outliers in a univariate time series...
This paper analyzes the issue of testing for the presence of additive outliers when the variable stu...
An outlier is an observation that appears to deviate markedly from other observations in the sample ...
Given a data set arising from a series of observations, an outlier is a value that deviates substant...
This paper compares the tractability of four discordancy statistics for modelling outliers based on ...
In this paper we propose a method for correctly detecting outliers based on a new technique develope...
[eng] The role of additive outliers in integrated time series has attracted some attention recently ...
Abstract: Zerbet and Nikulin presented the new statistic Z k for detecting outliers in exponential d...
We revisit the outlier hypothesis testing framework of Li \emph{et al.} (TIT 2014) and derive fundam...
In this paper we present a "model free' method of outlier detection for Gaussian time series by usin...