For time series data, certain types of outliers are intrinsically more harmful for parameter estimation and future predictions than others, irrespective of their frequency. In this paper, for the first time, we study the characteristics of such outliers through the lens of the influence functional from robust statistics. In particular, we consider the input time series as a contaminated process, with the recurring outliers generated from an unknown contaminating process. Then we leverage the influence functional to understand the impact of the contaminating process on parameter estimation. The influence functional results in a multi-dimensional vector that measures the sensitivity of the predictive model to the contaminating process, which ...
We address some potential problems with the existing procedures of outlier detection in time series....
We discuss the analysis of count time series following generalized linear models in the presence of...
The applicability of an outlier detection statistic developed for standard time series is assessed i...
This study attempts to better understand the impact of an outlier in time series model and the impor...
Outliers in time series, depending on their nature may have a moderate to significant impact on the ...
Outliers are the atypical observations that lie at abnormal distances from the other observations in...
A single outlier in a regression model can be detected by the effect of its deletion on the residual...
Outliers, from a subjective point of view, are observations which are discordant from the other rema...
As part of a SERC funded project investigating the detection and treatment of outlying time series t...
This article presents a methodology to build measures of influence in regression models with time se...
A method for identifying and estimating outliers in a time series is proposed, based on fitting func...
This paper considers outliers in multivariate time series analysis. It generalizes four types of dis...
Most real time series exhibit certain characteristics that make the choice of model and its specific...
We discuss the analysis of count time series following generalised linear models in the presence of ...
We study the problem of intervention effects generating various types of outliers in a linear count ...
We address some potential problems with the existing procedures of outlier detection in time series....
We discuss the analysis of count time series following generalized linear models in the presence of...
The applicability of an outlier detection statistic developed for standard time series is assessed i...
This study attempts to better understand the impact of an outlier in time series model and the impor...
Outliers in time series, depending on their nature may have a moderate to significant impact on the ...
Outliers are the atypical observations that lie at abnormal distances from the other observations in...
A single outlier in a regression model can be detected by the effect of its deletion on the residual...
Outliers, from a subjective point of view, are observations which are discordant from the other rema...
As part of a SERC funded project investigating the detection and treatment of outlying time series t...
This article presents a methodology to build measures of influence in regression models with time se...
A method for identifying and estimating outliers in a time series is proposed, based on fitting func...
This paper considers outliers in multivariate time series analysis. It generalizes four types of dis...
Most real time series exhibit certain characteristics that make the choice of model and its specific...
We discuss the analysis of count time series following generalised linear models in the presence of ...
We study the problem of intervention effects generating various types of outliers in a linear count ...
We address some potential problems with the existing procedures of outlier detection in time series....
We discuss the analysis of count time series following generalized linear models in the presence of...
The applicability of an outlier detection statistic developed for standard time series is assessed i...