2015
DOI: 10.1109/lsp.2015.2457617
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Hybrid Barankin–Weiss–Weinstein Bounds

Abstract: This letter investigates hybrid lower bounds on the mean square error in order to predict the so-called threshold effect. A new family of tighter hybrid large error bounds based on linear transformations (discrete or integral) of a mixture of the McAulay-Seidman bound and the Weiss-Weinstein bound is provided in multivariate parameters case with multiple test points. For use in applications, we give a closed-form expression of the proposed bound for a set of Gaussian observation models with parameterized mean,… Show more

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Cited by 12 publications
(14 citation statements)
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“…This results in a "hybrid" lower bound for the estimation of the parameter vector θ. Such kind of lower bound has already been proposed in the literature [27]- [29]. In this paper, we propose to combine the (deterministic) Cramér-Rao bound [30], [31,Chap.…”
Section: B the Hybrid Cramér-rao-weiss-weinstein Bound (Hcrwwb)mentioning
confidence: 99%
“…This results in a "hybrid" lower bound for the estimation of the parameter vector θ. Such kind of lower bound has already been proposed in the literature [27]- [29]. In this paper, we propose to combine the (deterministic) Cramér-Rao bound [30], [31,Chap.…”
Section: B the Hybrid Cramér-rao-weiss-weinstein Bound (Hcrwwb)mentioning
confidence: 99%
“…It has recently been shown in the literature [18] that eq. (4) can be bounded using the covariance inequality.…”
Section: Covariance Inequalitymentioning
confidence: 99%
“…First, with the mindset of frequentists [47]- [49], we assume that the parameters of interest and the quantization threshold are deterministic unknown variables. Then, we consider a hybrid model [50]- [54], where the channel parameters are random and distributed according to a known probability distribution function, while the quantization offset is modeled as a deterministic unknown nuisance parameter. The hybrid approach is motivated by the fact that in various cases prior information about the channel is available at the receiver.…”
Section: B Motivation and Contributionmentioning
confidence: 99%