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Auteurs principaux: Quispe, Jesus Enrique Achire, Ramos, Eduardo, Ramos, Pedro Luiz
Format: Preprint
Publié: 2024
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Accès en ligne:https://arxiv.org/abs/2410.00142
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author Quispe, Jesus Enrique Achire
Ramos, Eduardo
Ramos, Pedro Luiz
author_facet Quispe, Jesus Enrique Achire
Ramos, Eduardo
Ramos, Pedro Luiz
contents The Rician distribution, a well-known statistical distribution frequently encountered in fields like magnetic resonance imaging and wireless communications, is particularly useful for describing many real phenomena such as signal process data. In this paper, we introduce objective Bayesian inference for the Rician distribution parameters, specifically the Jeffreys rule and Jeffreys prior are derived. We proved that the obtained posterior for the first priors led to an improper posterior while the Jeffreys prior led to a proper distribution. To evaluate the effectiveness of our proposed Bayesian estimation method, we perform extensive numerical simulations and compare the results with those obtained from traditional moment-based and maximum likelihood estimators. Our simulations illustrate that the Bayesian estimators derived from the Jeffreys prior provide nearly unbiased estimates, showcasing the advantages of our approach over classical techniques. Additionally, our framework incorporates the S.A.F.E. principles-Sustainable, Accurate, Fair, and Explainable-ensuring robustness, fairness, and transparency in predictive modeling.
format Preprint
id arxiv_https___arxiv_org_abs_2410_00142
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle On the posterior property of the Rician distribution
Quispe, Jesus Enrique Achire
Ramos, Eduardo
Ramos, Pedro Luiz
Methodology
The Rician distribution, a well-known statistical distribution frequently encountered in fields like magnetic resonance imaging and wireless communications, is particularly useful for describing many real phenomena such as signal process data. In this paper, we introduce objective Bayesian inference for the Rician distribution parameters, specifically the Jeffreys rule and Jeffreys prior are derived. We proved that the obtained posterior for the first priors led to an improper posterior while the Jeffreys prior led to a proper distribution. To evaluate the effectiveness of our proposed Bayesian estimation method, we perform extensive numerical simulations and compare the results with those obtained from traditional moment-based and maximum likelihood estimators. Our simulations illustrate that the Bayesian estimators derived from the Jeffreys prior provide nearly unbiased estimates, showcasing the advantages of our approach over classical techniques. Additionally, our framework incorporates the S.A.F.E. principles-Sustainable, Accurate, Fair, and Explainable-ensuring robustness, fairness, and transparency in predictive modeling.
title On the posterior property of the Rician distribution
topic Methodology
url https://arxiv.org/abs/2410.00142