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Outlier Detection in Time Series Models Using Local Influence Method
Authors:Jun Lu  Fei Chen
Institution:1. Statistics and Mathematics School , Yunnan University of Finance and Economics , Kunming , P.R. China;2. Mathematics and Statistics School , Yunnan University , Kunming , P.R. China;3. Statistics and Mathematics School , Yunnan University of Finance and Economics , Kunming , P.R. China
Abstract:We propose a new procedure for detecting a patch of outliers or influential observations for autoregressive integrated moving average (ARIMA) model using local influence analysis. It is shown that the dependency aspects of time series data gives rise to masking or smearing effects when the local influence analysis is performed using current perturbation schemes. We suggest a new perturbation scheme to take into account the dependent structure of time series data, and employ the stepwise local influence method to give a diagnostic procedure. We show that the new perturbation scheme can avoid the smearing effects, and the stepwise technique of local influence can successfully deal with masking effects. Various simulation studies are performed to show the efficiency of proposed methodology and a real example is used for illustrations.
Keywords:ARIMA model  Outliers or influential observations  Perturbation scheme  Stepwise local influence analysis  Time series data
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