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The Effects of Sampling Strategies on the Small Sample Properties of the Logit Estimator

机译:抽样策略对Logit估计量小样本属性的影响

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Empirical researchers face a trade-off between the lower resource costs associated with smaller samples and the increased confidence in the results gained from larger samples. Choice of sampling strategy is one tool researchers can use to reduce costs yet still attain desired confidence levels. This study uses Monte Carlo simulation to examine the impact of nine sampling strategies on the finite sample performance of the maximum likelihood logit estimator. The results show stratified random sampling with balanced strata sizes and a bias correction for choice-based sampling outperforms all other sampling strategies with respect to four small-sample performance measures.
机译:实证研究人员面临着与较小样本相关的较低资源成本与对较大样本所得结果的增强信心之间的权衡。选择抽样策略是研究人员可以用来降低成本,但仍达到所需置信度水平的一种工具。这项研究使用蒙特卡洛模拟来检验九种采样策略对最大似然对数估计器的有限样本性能的影响。结果表明,相对于四个小样本绩效指标,分层均衡的分层分层随机抽样和基于选择的抽样的偏差校正优于所有其他抽样策略。

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