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Count Data Models with Correlated Unobserved Heterogeneity

机译:具有相关的不可观测异质性的数据模型

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摘要

As previously argued, the correlation between included and omitted regressors generally causes inconsistency of standard estimators for count data models. Non-linear instrumental variables estimation of an exponential model under conditional moment restrictions is one of the proposed remedies. This approach is extended here by fully exploiting the model assumptions and thereby improving efficiency of the resulting estimator. Empirical likelihood in particular has favourable properties in this setting compared with the two-step generalized method of moments, as demonstrated in a Monte Carlo experiment. The proposed method is applied to the estimation of a cigarette demand function.
机译:如前所述,包含和省略的回归变量之间的相关性通常会导致计数数据模型的标准估计量不一致。条件矩约束下的指数模型的非线性工具变量估计是提出的补救措施之一。通过充分利用模型假设,从而提高所得估计器的效率,从而扩展了该方法。如蒙特卡洛实验所示,与两步广义矩方法相比,经验似然在这种情况下尤其具有有利的属性。所提出的方法被应用于香烟需求函数的估计。

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