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A note on influence diagnostics in AR(1) time series models
Authors:Mauricio Zevallos  Bruno Santos  Luiz K. Hotta
Affiliation:1. Department of Statistics, University of Campinas, IMECC-UNICAMP, Rua Sérgio Buarque de Holanda 651, Cidade Universitária, Barão Geraldo, CEP 13083-859, Campinas, SP, Brazil;2. Equity Research Division, Votorantim Corretora, Brazil
Abstract:The purpose of this paper is to develop influence diagnostics for AR(1) models under the innovative and the data perturbation schemes. There are four main contributions. First, we derive analytical expressions for the slope and curvature statistics. Second, we establish a relationship between the slope and curvature showing that the standardised slope and standardised curvature are equal for the innovative perturbation scheme, and these vectors are nearly identical for several values of the autoregressive parameter, for the data perturbation scheme. Third, we present a connection between the influence statistics and the tests for outlier detection. Fourth, for the innovative perturbation scheme, we derive the asymptotic distribution of a new influence statistic, whereas for the data perturbation scheme, the distribution of the influence statistics is obtained via Monte Carlo simulation. We additionally discuss practical guidelines for the use of local influence statistics, which are illustrated on a chemical process data set.
Keywords:Slope   Curvature   Local influence   Outliers
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