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A Bayesian wavelet approach to estimation of a change-point in a nonlinear multivariate time series
Authors:Robert M Steward
Institution:Department of Mathematics and Computer Science, Saint Louis University, Saint Louis, MO, USA
Abstract:ABSTRACT

We propose a semiparametric approach to estimate the existence and location of a statistical change-point to a nonlinear multivariate time series contaminated with an additive noise component. In particular, we consider a p-dimensional stochastic process of independent multivariate normal observations where the mean function varies smoothly except at a single change-point. Our approach involves conducting a Bayesian analysis on the empirical detail coefficients of the original time series after a wavelet transform. If the mean function of our time series can be expressed as a multivariate step function, we find our Bayesian-wavelet method performs comparably with classical parametric methods such as maximum likelihood estimation. The advantage of our multivariate change-point method is seen in how it applies to a much larger class of mean functions that require only general smoothness conditions.
Keywords:Semiparametric  scaling coefficient  detail coefficient  discrete wavelet transform  Haar wavelet
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