Uncertainty Quantification Techniques in Statistics

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...

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Main Author: Kim, Jong-Min (auth)
Format: Book Chapter
Published: MDPI - Multidisciplinary Digital Publishing Institute 2020
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Online Access:Get Fullteks
DOAB: description of the publication
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100 1 |a Kim, Jong-Min  |4 auth 
245 1 0 |a Uncertainty Quantification Techniques in Statistics 
260 |b MDPI - Multidisciplinary Digital Publishing Institute  |c 2020 
300 |a 1 electronic resource (128 p.) 
506 0 |a Open Access  |2 star  |f Unrestricted online access 
520 |a 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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546 |a English 
653 |a Kullback-Leibler divergence 
653 |a geometric distribution 
653 |a accuracy 
653 |a AUROC 
653 |a allele read counts 
653 |a mixture model 
653 |a low-coverage 
653 |a entropy 
653 |a gene-expression data 
653 |a SCAD 
653 |a data envelopment analysis 
653 |a LASSO 
653 |a high-throughput 
653 |a sandwich variance estimator 
653 |a adaptive lasso 
653 |a semiparametric regression 
653 |a ?1 lasso 
653 |a Laplacian matrix 
653 |a elastic net 
653 |a feature selection 
653 |a sea surface temperature 
653 |a gene expression data 
653 |a Skew-Reflected-Gompertz distribution 
653 |a lasso 
653 |a next-generation sequencing 
653 |a BH-FDR 
653 |a stochastic frontier model 
653 |a ?2 ridge 
653 |a geometric mean 
653 |a resampling 
653 |a Gompertz distribution 
653 |a adapative lasso 
653 |a group efficiency comparison 
653 |a sensitive attribute 
653 |a MCP 
653 |a probability proportional to size (PPS) sampling 
653 |a randomization device 
653 |a SIS 
653 |a Yennum et al.'s model 
653 |a ensembles 
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