A Nonlinear Subspace Approach for Parametric Estimation of PDFs from Short Data Records with Application to Rayleigh Fading
Ahmad A. Masoud

TL;DR
This paper introduces a nonlinear subspace estimator for real-time parametric density estimation from short data records, effectively embedding prior information and nullifying irrelevant components, with applications to Rayleigh fading channels.
Contribution
It presents a novel nonlinear subspace method for accurate, fast parametric density estimation from limited data, applicable to various distributions including Rayleigh and lognormal.
Findings
High accuracy in parameter estimation from short data records
Demonstrated superiority over norm-based methods in simulations
Effective for multiple distributions, including Rayleigh and lognormal
Abstract
This paper tackles the issue of real-time parametric estimation of a wide class of probability density functions from limited datasets. This type of estimation addresses recent applications that require joint sensing and actuation. The suggested estimator operates in the nonlinear subspace that the parameter space of the distribution creates in the measurement sample space. This enables the estimator to embed a priori available information about the distribution in the computations to produce parameter estimates that are induced by signal components belonging only to the correct class of density functions being considered. It also enables it to nullify the effect of those components that do not belong to this class on the estimation process. The estimator can, with high accuracy, compute quickly the parameters of a wide class of probability density functions from short data records. The…
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