Article ID Journal Published Year Pages File Type
10526762 Statistics & Probability Letters 2005 10 Pages PDF
Abstract
A method for identifying and estimating outliers in a time series is proposed, based on fitting functional autoregressive models. Both additive and innovation outliers may be defined. A simulation experiment and the analysis of some real data sets suggest that the proposed method is effective both for series following some nonlinear models, such as self-exciting threshold autoregressive or exponential autoregressive, and for linear series generated by autoregressive moving average processes.
Related Topics
Physical Sciences and Engineering Mathematics Statistics and Probability
Authors
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