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Fast Adaptive Identification of Stable Innovation Filters
Published 11 Mar 2018 in stat.ME, cs.SY, eess.SP, eess.SY, math.ST, and stat.TH | (1803.03908v1)
Abstract: The adaptive identification of the impulse response of an innovation filter is considered. The impulse response is a finite sum of known basis functions with unknown coefficients. These unknown coefficients are estimated using a pseudolinear regression. This estimate is implemented using a square root algorithm based on a displacement rank structure. When the initial conditions have low displacement rank, the filter update is $O(n)$. If the filter architecture is chosen to be triangular input balanced, the estimation problem is well-conditioned and a simple, low rank initialization is available.
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