Most statistical methods for the analysis of correlated binary data are based on asymptotic theory. Therefore it is important re, generate correlated binary data efficiently for Monte Carlo simulation studies to investigate the finite sample performance of these methods. This article provides a simple method for generating correlated binary data with a given joint distribution. The key idea is to consider k-variate binary data as a multinomial distribution with 2(k) possible outcomes.
机构:
US FDA, NATL CTR TOXICOL RES, DIV BIOMETRY & RISK ASSESSMENT, JEFFERSON, AR 72079 USAUS FDA, NATL CTR TOXICOL RES, DIV BIOMETRY & RISK ASSESSMENT, JEFFERSON, AR 72079 USA
George, EO
Kodell, RL
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机构:
US FDA, NATL CTR TOXICOL RES, DIV BIOMETRY & RISK ASSESSMENT, JEFFERSON, AR 72079 USAUS FDA, NATL CTR TOXICOL RES, DIV BIOMETRY & RISK ASSESSMENT, JEFFERSON, AR 72079 USA
机构:
US FDA, NATL CTR TOXICOL RES, DIV BIOMETRY & RISK ASSESSMENT, JEFFERSON, AR 72079 USAUS FDA, NATL CTR TOXICOL RES, DIV BIOMETRY & RISK ASSESSMENT, JEFFERSON, AR 72079 USA
George, EO
Kodell, RL
论文数: 0引用数: 0
h-index: 0
机构:
US FDA, NATL CTR TOXICOL RES, DIV BIOMETRY & RISK ASSESSMENT, JEFFERSON, AR 72079 USAUS FDA, NATL CTR TOXICOL RES, DIV BIOMETRY & RISK ASSESSMENT, JEFFERSON, AR 72079 USA