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Subject
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EM algorithm 47 Bootstrap 37 Variable selection 36 Model selection 35 Markov chain Monte Carlo 34 Maximum likelihood 25 Robustness 24 Simulation 23 Classification 22 Dynamic programming 22 Bayesian inference 19 Markov decision processes 19 Confidence interval 18 Quantile regression 18 Clustering 17 Consistency 17 Dimension reduction 17 MCMC 16 Survival analysis 15 Functional data 14 Functional data analysis 14 Generalized linear models 14 Importance sampling 14 Longitudinal data 14 Maximum likelihood estimation 14 Nonparametric regression 14 Optimal control 14 Robust estimation 14 Core 13 Linear programming 13 Logistic regression 13 Monte Carlo simulation 13 Density estimation 12 Lasso 12 Optimization 12 Random effects 12 Regularization 12 Shapley value 12 Cluster analysis 11 Gibbs sampling 11
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Undetermined 6,248 Free 5
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Article 6,272 Book / Working Paper 17
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Collection of articles of several authors 4 Sammelwerk 4 Aufsatzsammlung 2 Handbook 1 Handbuch 1
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Undetermined 6,277 English 12
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Balakrishnan, N. 40 Molenberghs, Geert 22 Tang, Man-Lai 22 Kundu, Debasis 21 Paula, Gilberto A. 16 Trenkler, Gotz 16 Lee, Sik-Yum 15 Cordeiro, Gauss M. 14 Hawkins, Douglas M. 14 Tijs, Stef 14 Tian, Guo-Liang 13 Cribari-Neto, Francisco 12 Nadarajah, Saralees 12 Tutz, Gerhard 12 Borm, Peter 11 Chen, Hubert J. 11 Hubert, Mia 11 Lee, Jae Won 11 Lemonte, Artur J. 11 Ortega, Edwin M.M. 11 Poon, Wai-Yin 11 Priebe, Carey E. 11 Rousseeuw, Peter J. 11 Bentler, Peter M. 10 Dodge, Yadolah 10 Hernández-Lerma, Onésimo 10 Agresti, Alan 9 Brown, Morton B. 9 Cavazos-Cadena, Rolando 9 Croux, Christophe 9 Gerlach, Richard 9 Lesaffre, Emmanuel 9 Liang, Hua 9 Lui, Kung-Jong 9 Shin, Dong Wan 9 Wang, Yong 9 D'Urso, Pierpaolo 8 Ferrari, Silvia L.P. 8 Fraiman, Ricardo 8 Gupta, Ramesh C. 8
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Computational Statistics & Data Analysis 4,738 Computational Statistics 1,534 Springer handbooks of computational statistics 3 Computational Statistics and Data Analysis 2 Computational Statistics and Data Analysis 143 (2020) 106843 1 Computational Statistics and Data Analysis 56 (2012) 1–14 1 Computational Statistics and Data Analysis, Forthcoming 1 Karabatsos, G. (2022). Approximate Bayesian computation using asymptotically normal point estimates. Computational Statistics, 1-38 1 Springer Handbooks of Computational Statistics 1 https://doi.org/10.1016/j.csda.2019.106843 Previous title "HOW MANY PARAMETERS DOES MY KERNEL DENSITY ESTIMATE HAVE?" 1
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RePEc 6,272 ECONIS (ZBW) 11 USB Cologne (EcoSocSci) 6
Showing 261 - 270 of 6,289
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Fixed-rank matrix factorizations and Riemannian low-rank optimization
Mishra, Bamdev; Meyer, Gilles; Bonnabel, Silvère; … - In: Computational Statistics 29 (2014) 3, pp. 591-621
Motivated by the problem of learning a linear regression model whose parameter is a large fixed-rank non-symmetric matrix, we consider the optimization of a smooth cost function defined on the set of fixed-rank matrices. We adopt the geometric framework of optimization on Riemannian quotient...
Persistent link: https://www.econbiz.de/10010847501
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Smoothing noisy data for irregular regions using penalized bivariate splines on triangulations
Zhou, Lan; Pan, Huijun - In: Computational Statistics 29 (2014) 1, pp. 263-281
The penalized spline method has been widely used for estimating univariate smooth functions based on noisy data. This paper studies its extension to the two-dimensional case. To accommodate the need of handling data distributed on irregular regions, we consider bivariate splines defined on...
Persistent link: https://www.econbiz.de/10010847576
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Using sliced mean variance–covariance inverse regression for classification and dimension reduction
Lindsey, Charles; Sheather, Simon; McKean, Joseph - In: Computational Statistics 29 (2014) 3, pp. 769-798
The sliced mean variance–covariance inverse regression (SMVCIR) algorithm takes grouped multivariate data as input and transforms it to a new coordinate system where the group mean, variance, and covariance differences are more apparent. Other popular algorithms used for performing graphical...
Persistent link: https://www.econbiz.de/10010847630
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Bayesian confidence intervals for probability of default and asset correlation of portfolio credit risk
Chang, Yi-Ping; Yu, Chih-Tun - In: Computational Statistics 29 (2014) 1, pp. 331-361
We derive Bayesian confidence intervals for the probability of default (PD), asset correlation (Rho), and serial dependence (Theta) for low default portfolios (LDPs). The goal is to reduce the probability of underestimating credit risk in LDPs. We adopt a generalized method of moments with...
Persistent link: https://www.econbiz.de/10010847646
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Inferring Boolean functions via higher-order correlations
Maucher, Markus; Kracht, David; Schober, Steffen; … - In: Computational Statistics 29 (2014) 1, pp. 97-115
Both the Walsh transform and a modified Pearson correlation coefficient can be used to infer the structure of a Boolean network from time series data. Unlike the correlation coefficient, the Walsh transform is also able to represent higher-order correlations. These correlations of several...
Persistent link: https://www.econbiz.de/10010847673
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From simple structure to sparse components: a review
Trendafilov, Nickolay - In: Computational Statistics 29 (2014) 3, pp. 431-454
The article begins with a review of the main approaches for interpretation the results from principal component analysis (PCA) during the last 50–60 years. The simple structure approach is compared to the modern approach of sparse PCA where interpretable solutions are directly obtained. It is...
Persistent link: https://www.econbiz.de/10010847792
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Canonical Forest
Chen, Yu-Chuan; Ha, Hyejung; Kim, Hyunjoong; Ahn, Hongshik - In: Computational Statistics 29 (2014) 3, pp. 849-867
We propose a new classification ensemble method named Canonical Forest. The new method uses canonical linear discriminant analysis (CLDA) and bootstrapping to obtain accurate and diverse classifiers that constitute an ensemble. We note CLDA serves as a linear transformation tool rather than a...
Persistent link: https://www.econbiz.de/10010847811
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Bayesian bandwidth estimation for a semi-functional partial linear regression model with unknown error density
Shang, Han - In: Computational Statistics 29 (2014) 3, pp. 829-848
In the context of semi-functional partial linear regression model, we study the problem of error density estimation. The unknown error density is approximated by a mixture of Gaussian densities with means being the individual residuals, and variance a constant parameter. This mixture error...
Persistent link: https://www.econbiz.de/10010847818
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A graphical exploration of the Deepwater Horizon oil spill
Follett, Lendie; Genschel, Ulrike; Hofmann, Heike - In: Computational Statistics 29 (2014) 1, pp. 121-132
This paper investigates some of the immediate impacts of the Deepwater Horizon oil spill of 2010 on the environment using graphical means. The exploration focuses on the effects of the oil discharge on wildlife, the chemical pollution in the area following the spill, and salinity levels in the...
Persistent link: https://www.econbiz.de/10010847911
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Sparse matrices in frame theory
Krahmer, Felix; Kutyniok, Gitta; Lemvig, Jakob - In: Computational Statistics 29 (2014) 3, pp. 547-568
Frame theory is closely intertwined with signal processing through a canon of methodologies for the analysis of signals using (redundant) linear measurements. The canonical dual frame associated with a frame provides a means for reconstruction by a least squares approach, but other dual frames...
Persistent link: https://www.econbiz.de/10010847956
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