Time series is the way of data analysis and modelling in which present observation is retrieved based on past observations which is called ARIMA model in case of linear dependency. If series is contaminated by an outlier, then it affects both order and parameter(s). The present paper deals an autoregressive (AR) model with an additive outlier under Bayesian prospective. For identification of an outlier, posterior odds ratio has been derived under suitable prior assumptions. An empirical analysis and realization is carried out to get applicability of proposed testing methodology.Keywords: Autoregressive model, posterior odds ratio, prior distribution.AMS 2010 Mathematics Subject Classification: 62F03, 62F15, 62M1
Outlier detection is one of the most important challenges with many present-day applications. Outlie...
Outlier detection is one of the most important challenges with many present-day applications. Outlie...
This paper proposed the combination of two statistical techniques for the detection and imputation o...
The time varying observation recorded in chronological order is called time series. The extreme valu...
A Bayesian approach is adopted to the analysis of autoregressive time series subject to outliers. Ad...
This work investigates outlier detection and modelling in non-Gaussian autoregressive time series mo...
The presence of outliers causes biases in the estimation of ARIMA models. In this work we present a ...
The presence of outliers causes biases in the estimation of ARIMA models. In this work we present a ...
The presence of outliers causes biases in the estimation of ARIMA models. In this work we present a ...
Identification and estimation of outliers in time series is proposed by using empirical likelihood m...
This work investigates outlier detection and modelling in non-Gaussian autoregressive time series mo...
INGARCH models for time series of counts arising, e.g., in epidemiology or finance assume the observ...
<p>This article proposes a development of detecting patches of additive outliers in autoregressive t...
This work investigates outlier detection and modelling in non-Gaussian autoregressive time series mo...
The presence of outliers causes biases in the estimation of ARIMA models. In this work we present a ...
Outlier detection is one of the most important challenges with many present-day applications. Outlie...
Outlier detection is one of the most important challenges with many present-day applications. Outlie...
This paper proposed the combination of two statistical techniques for the detection and imputation o...
The time varying observation recorded in chronological order is called time series. The extreme valu...
A Bayesian approach is adopted to the analysis of autoregressive time series subject to outliers. Ad...
This work investigates outlier detection and modelling in non-Gaussian autoregressive time series mo...
The presence of outliers causes biases in the estimation of ARIMA models. In this work we present a ...
The presence of outliers causes biases in the estimation of ARIMA models. In this work we present a ...
The presence of outliers causes biases in the estimation of ARIMA models. In this work we present a ...
Identification and estimation of outliers in time series is proposed by using empirical likelihood m...
This work investigates outlier detection and modelling in non-Gaussian autoregressive time series mo...
INGARCH models for time series of counts arising, e.g., in epidemiology or finance assume the observ...
<p>This article proposes a development of detecting patches of additive outliers in autoregressive t...
This work investigates outlier detection and modelling in non-Gaussian autoregressive time series mo...
The presence of outliers causes biases in the estimation of ARIMA models. In this work we present a ...
Outlier detection is one of the most important challenges with many present-day applications. Outlie...
Outlier detection is one of the most important challenges with many present-day applications. Outlie...
This paper proposed the combination of two statistical techniques for the detection and imputation o...