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A statistical uncertainty principle for estimating the time of a discrete shift in the mean of a continuous time random process
Authors:Melvin J. Hinich  John Foster  Phillip Wild
Affiliation:1. Applied Research Laboratories, The University of Texas at Austin, P.O. Box 8029, Austin, TX 78713-8029, USA;2. School of Economics, University of Queensland, St Lucia, QLD 4072, Australia
Abstract:The purpose of this article is to present a statistical uncertainty principle that can be used when localizing a single change in the mean of a band-limited stationary random process. The statistical model investigated is a continuous time process that experiences a shift in its mean. This continuous time process is presumed to be sampled using an ideal low-pass filter. The least squares estimate of the location of the change in mean is asymptotically Gaussian. The standard deviation of the least squares estimate of the location of the change-point provides a physical limit to the accuracy of the estimate of the time of the mean shift which cannot be bettered.
Keywords:Continuous processes   Discrete sampling   Mean shift   Finite bandwidth   Finite support   Uncertainty principle
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