Amir Sanati’s research while affiliated with Persian Gulf University and other places

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Publications (3)


Low and high dimensional wavelet thresholds for matrix-variate normal distribution
  • Article

March 2024

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21 Reads

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2 Citations

Communication in Statistics- Simulation and Computation

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Amir Sanati

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The matrix-variate normal distribution is a probability distribution that is a generalization of the multivariate normal distribution to matrix-valued random variables. In this paper, we introduce a wavelet shrinkage estimator based on Stein’s unbiased risk estimate (SURE) threshold for matrix-variate normal distribution. We find a new SURE threshold for soft thresholding wavelet shrinkage estimator under the reflected normal balanced loss function in low and high dimensional cases. Also, we obtain the restricted wavelet shrinkage estimator based on non-negative sub matrix of the mean matrix. Finally, we present a simulation study to test the validity of the wavelet shrinkage estimator and two real examples for low and high dimensional data sets.



Citations (2)


... Yuasa and Kubokawa (2023) considering generalized Bayes estimators for the normal mean and covariance matrices. Karamikabir et al. (2023Karamikabir et al. ( , 2024 introduced shrinkage wavelet estimator for the matrix variate normal mean under the balanced loss function in low and high dimensional. Also, they obtained restricted shrinkage wavelet estimator based on nonnegative sub-matrix of the mean matrix. ...

Reference:

Bayesian shrinkage wavelet estimation of mean matrix of the matrix variate normal distribution with application in de-noising
Low and high dimensional wavelet thresholds for matrix-variate normal distribution
  • Citing Article
  • March 2024

Communication in Statistics- Simulation and Computation

... Recent literature highlights the advantages of ensemble learning, particularly stacking, in enhancing robustness and predictive accuracy [19,26,28,[36][37][38]. Our meta-model aligns with these findings, effectively integrating multiple base models to outperform individual networks. ...

The effectiveness of deep learning vs. traditional methods for lung disease diagnosis using chest X-ray images: A systematic review
  • Citing Article
  • September 2023

Applied Soft Computing