Dae-Hak Kim
Catholic University of Daegu
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Publication
Featured researches published by Dae-Hak Kim.
Computational Statistics & Data Analysis | 2005
Hyeong Chul Jeong; Myoungshic Jhun; Dae-Hak Kim
Abstract For the analysis of an r × c contingency table having ordered row categories and ordered column categories, a bootstrap method is applied for the model-based likelihood ratio test for independence. A model-based likelihood ratio chi-square statistic and the statistic of the maximum eigenvalue of a Wishart matrix are also discussed. A simulation study is performed to compare the proposed method with existing ones. A real data example is included.
Korean Journal of Applied Statistics | 2009
Hyeong-Chul Jeong; Dae-Hak Kim
In this paper, we consider simultaneous confidence intervals for the difference of proportions between two groups taken from multivariate binomial distributions in a nonparametric way. We briefly discuss the construction of simultaneous confidence intervals using the method of adjusting the p-values in multiple tests. The features of bootstrap simultaneous confidence intervals using non-pooled samples are presented. We also compute confidence intervals from the adjusted p-values of multiple tests in the Westfall (1985) style based on a pooled sample. The average coverage probabilities of the bootstrap simultaneous confidence intervals are compared with those of the Bonferroni simultaneous confidence intervals and the Sidak simultaneous confidence intervals. Finally, we give an example that shows how the proposed bootstrap simultaneous confidence intervals can be utilized through data analysis.
Communications for Statistical Applications and Methods | 2006
Dae-Hak Kim; Hyeong-Chul Jeong
In this paper we propose an estimation method on the regression model with randomly censored observations of the training data set. The weighted least squares support vector machine regression is applied for the regression function estimation by incorporating the weights assessed upon each observation in the optimization problem. Numerical examples are given to show the performance of the proposed estimation method.
Communications for Statistical Applications and Methods | 2003
Dae-Hak Kim; Kwang-Sik Oh; Joo-Yong Shim
In this paper we propose an on line training method for classification based on least squares support vector machine. Proposed method enables the computation cost to be reduced and the training to be peformed incrementally, With the incremental formulation of an inverse matrix in optimization problem, current information and new input data can be used for building the new inverse matrix for the estimation of the optimal bias and Lagrange multipliers, so the large scale matrix inversion operation can be avoided. Numerical examples are included which indicate the performance of proposed algorithm.
Communications for Statistical Applications and Methods | 2002
Dae-Hak Kim; Hyeong-Chul Jeong
In this paper, we considered an application of the bootstrap method for logit model. Estimation of type I error probability, the bootstrap p-values and bootstrap confidence intervals of parameter were proposed. Small sample Monte Carlo simulation were conducted in order to compare proposed method with existing normal theory based asymptotic method.
한국데이터정보과학회지 = Journal of the Korean Data & Information Science Society | 2006
Dae-Hak Kim; Heong-Chul Jeong; Byoung-Cheol Jung
Journal of the Korean Data and Information Science Society | 2009
Dae-Hak Kim
Journal of the Korean Data and Information Science Society | 2006
Dae-Hak Kim; Heong Chul Jeong
Journal of the Korean Data and Information Science Society | 2006
Dae-Hak Kim; Jun Hyeok Eom; Heong Chul Jeong
Journal of the Korean Data and Information Science Society | 2003
Dae-Hak Kim; Kwang-Sik Oh