Bayesian Estimation of Minimum Uncertainties in Determining Parameters of Analytical Signal Consisting of Overlapping Symmetrical Peaks
Journal Title: International Journal of Emerging Technologies in Computational and Applied Sciences - Year 2015, Vol 14, Issue 1
Abstract
We present the results of the error analysis of Bayesian estimates of peak parameters. The analysis was based on the sampling of the posterior distribution. Peak shape was modelled by Gaussian and Lorentzian functions .Obtained results confirmed our previous Least Squares estimates.
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