The problem of identifying the time location and estimating the amplitude of outliers in non-linear time series is addressed. A model-based method is proposed for detecting the presence of additive or innovational outliers when the series is generated by a general non-linear model. We use this method for identifying and estimating outliers in bilinear, self-exciting threshold autoregressive and exponential autoregressive models. A simulation study is performed to test the proposed procedures and comparing them to the methods based on linear models and linear interpolators. Finally, our results are applied for detecting outliers in the Canadian lynx trappings and in the sunspot numbers data
Identification and estimation of outliers in time series is proposed by using empirical likelihood m...
Identification and estimation of outliers in time series is proposed by using empirical likelihood m...
Identification and estimation of outliers in time series is proposed by using empirical likelihood m...
A method for identifying and estimating outliers in a time series is proposed, based on fitting func...
A method for identifying and estimating outliers in a time series is proposed, based on fitting func...
This paper proposed the combination of two statistical techniques for the detection and imputation o...
In this paper we present a "model free' method of outlier detection for Gaussian time series by usin...
In this paper we present a "model free' method of outlier detection for Gaussian time series by usin...
Identification and estimation of outliers in time series is proposed by using empirical likelihood m...
This study attempts to better understand the impact of an outlier in time series model and the impor...
Identification and estimation of outliers in time series is proposed by using empirical likelihood m...
Identification and estimation of outliers in time series is proposed by using empirical likelihood m...
Identification and estimation of outliers in time series is proposed by using empirical likelihood m...
Identification and estimation of outliers in time series is proposed by using empirical likelihood m...
Identification and estimation of outliers in time series is proposed by using empirical likelihood m...
Identification and estimation of outliers in time series is proposed by using empirical likelihood m...
Identification and estimation of outliers in time series is proposed by using empirical likelihood m...
Identification and estimation of outliers in time series is proposed by using empirical likelihood m...
A method for identifying and estimating outliers in a time series is proposed, based on fitting func...
A method for identifying and estimating outliers in a time series is proposed, based on fitting func...
This paper proposed the combination of two statistical techniques for the detection and imputation o...
In this paper we present a "model free' method of outlier detection for Gaussian time series by usin...
In this paper we present a "model free' method of outlier detection for Gaussian time series by usin...
Identification and estimation of outliers in time series is proposed by using empirical likelihood m...
This study attempts to better understand the impact of an outlier in time series model and the impor...
Identification and estimation of outliers in time series is proposed by using empirical likelihood m...
Identification and estimation of outliers in time series is proposed by using empirical likelihood m...
Identification and estimation of outliers in time series is proposed by using empirical likelihood m...
Identification and estimation of outliers in time series is proposed by using empirical likelihood m...
Identification and estimation of outliers in time series is proposed by using empirical likelihood m...
Identification and estimation of outliers in time series is proposed by using empirical likelihood m...
Identification and estimation of outliers in time series is proposed by using empirical likelihood m...
Identification and estimation of outliers in time series is proposed by using empirical likelihood m...