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Exploring Bona~Fide Optimal Noise for Bayesian Parameter Estimation

机译:探索BONA〜对贝叶斯参数估计的最佳噪声

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摘要

In this paper, we investigate the benefit of intentionally added noise to observed data in various scenarios of Bayesian parameter estimation. For optimal estimators, we theoretically demonstrate that the Bayesian Cramer-Rao bound for the case with added noise is never smaller than for the original data, and the updated minimum mean-square error (MSE) estimator performs no better. This motivates us to explore the feasibility of noise benefit in some useful suboptimal estimators. Several Bayesian estimators established from one-bit-quantizer sensors are considered, and for different types of pre-existing background noise, optimal distributions are determined for the added noise in order to improve the performance in estimation. With a single sensor, it is shown that the optimal added noise for reducing the MSE is actually a constant bias. However, with parallel arrays of such sensors, bona fide optimal added noise, no longer a constant bias, is shown to reduce the MSE. Moreover, it is found that the designed Bayesian estimators can benefit from the optimal added noise to effectively approach the performance of the minimum MSE estimator, even when the assembled sensors possess different quantization thresholds.
机译:在本文中,我们调查有意添加噪声在贝叶斯参数估计的各种场景中观察数据的益处。对于最佳估计器,我们理论上证明了对于添加噪声的壳体的贝叶斯克拉姆 - Rao绝不是原始数据的突出,并且更新的最小均方误差(MSE)估计器更好地执行。这激励我们探讨一些有用的次优估算中的噪声效益的可行性。考虑了几个从单位量化器传感器建立的贝叶斯估计,并且针对不同类型的预先存在的背景噪声,确定用于增加噪声的最佳分布,以提高估计的性能。使用单个传感器,显示用于减少MSE的最佳添加噪声实际上是恒定的偏置。但是,通过这种传感器的平行阵列,BONA FIDE最佳添加噪声,不再是恒定的偏置,显示为减少MSE。此外,发现设计的贝叶斯估计器可以从最佳添加噪声中受益,以有效地接近最小MSE估计器的性能,即使当组装的传感器具有不同的量化阈值时,也是如此。

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