估计员
渐近分布
抽样分布
统计
数学
标准误差
置信区间
采样(信号处理)
三角洲法
计量经济学
分布(数学)
自举(财务)
应用数学
计算机科学
计算机视觉
滤波器(信号处理)
数学分析
作者
Kenneth A. Bollen,Robert A. Stine
摘要
The decomposition of effects in structural equation models has been of considerable interest to social scientists. Finite-sample or asymptotic results for the sampling distribution of estimators of direct effects are widely available. Statistical inferences about indirect effects have relied exclusively on asymptotic methods which assume that the limiting distribution of the estimator is normal, with a standard error derived from the delta method. We examine bootstrap procedures as another way to generate standard errors and confidence intervals and to estimate the sampling distributions of estimators of direct and indirect effects. We illustrate the classical and the bootstrap methods with three empirical examples. We find that in a moderately large sample, the bootstrap distribution of an estimator is close to that assumed with the
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