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首页> 外文期刊>Journal of Econometrics >Exact Small-Sample Inference in Stationary, Fully Regular, Dynamic Demand Models.
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Exact Small-Sample Inference in Stationary, Fully Regular, Dynamic Demand Models.

机译:固定,完全规则,动态需求模型中的精确小样本推断。

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Asymptotics are known to be unreliable in multivariate models with cross-equation or non-linear restrictions, and the dimension of the problem makes bootstrapping impractical. In this paper, finite sample results are obtained by Markov chain Monte Carlo methods for a nearly non-stationary VAR, and for a differential dynamic demand model with homogeneity, Slutsky symmetry, and negativity. The full likelihood function is used in each case. Slutsky symmetry and negativity are tested using simulation estimates of partial Bayes factors. We argue that a diffuse prior on the long-run error covariance matrix helps to identify the equilibrium coefficients.
机译:在具有交叉方程或非线性约束的多元模型中,渐近是不可靠的,而且问题的严重性使得自举不切实际。在本文中,通过Markov链蒙特卡罗方法获得了几乎非平稳的VAR,以及具有同质性,Slutsky对称性和负性的差分动态需求模型的有限样本结果。在每种情况下都使用完全似然函数。 Slutsky对称性和负性使用部分贝叶斯因子的模拟估计进行测试。我们认为,长期误差协方差矩阵上的扩散先验有助于确定平衡系数。

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