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Uncertainty Quantification Techniques In Statistics Jongmin Kim

  • SKU: BELL-55252144
Uncertainty Quantification Techniques In Statistics Jongmin Kim
$ 31.00 $ 45.00 (-31%)

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Uncertainty Quantification Techniques In Statistics Jongmin Kim instant download after payment.

Publisher: MDPI
File Extension: PDF
File size: 2.91 MB
Pages: 128
Author: Jong-Min Kim
ISBN: 9783039285471, 3039285475
Language: English
Year: 2020

Product desciption

Uncertainty Quantification Techniques In Statistics Jongmin Kim by Jong-min Kim 9783039285471, 3039285475 instant download after payment.

Uncertainty quantification (UQ) is a mainstream research topic in applied mathematics and statistics. To identify UQ problems, diverse modern techniques for large and complex data analyses have been developed in applied mathematics, computer science, and statistics. This Special Issue of Mathematics (ISSN 2227-7390) includes diverse modern data analysis methods such as skew-reflected-Gompertz information quantifiers with application to sea surface temperature records, the performance of variable selection and classification via a rank-based classifier, two-stage classification with SIS using a new filter ranking method in high throughput data, an estimation of sensitive attribute applying geometric distribution under probability proportional to size sampling, combination of ensembles of regularized regression models with resampling-based lasso feature selection in high dimensional data, robust linear trend test for low-coverage next-generation sequence data controlling for covariates, and comparing groups of decision-making units in efficiency based on semiparametric regression.

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