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A bootstrap test for time series linearity
Authors:Arthur Berg  Efstathios Paparoditis  Dimitris N. Politis
Affiliation:1. Division of Biostatistics, Pennsylvania State University, Hershey, PA 17033, USA;2. Department of Mathematics and Statistics, University of Cyprus, P.O.Box 20537, CY 1678 Nicosia, Cyprus;3. Department of Mathematics, University of California, San Diego, La Jolla, CA 92093-0112, USA
Abstract:A bootstrap algorithm is proposed for testing Gaussianity and linearity in stationary time series, and consistency of the relevant bootstrap approximations is proven rigorously for the first time. Subba Rao and Gabr (1980) and Hinich (1982) have formulated some well-known nonparametric tests for Gaussianity and linearity based on the asymptotic distribution of the normalized bispectrum. The proposed bootstrap procedure gives an alternative way to approximate the finite-sample null distribution of such test statistics. We revisit a modified form of Hinich's test utilizing kernel smoothing, and compare its performance to the bootstrap test on several simulated data sets and two real data sets—the S&P 500 returns and the quarterly US real GNP growth rate. Interestingly, Hinich's test and the proposed bootstrapped version yield substantially different results when testing Gaussianity and linearity of the GNP data.
Keywords:Bispectrum   Bootstrap   Gaussianity test   Linearity test
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