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Nonstationary binary choice

机译:非平稳二元选择

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This paper develops an asymptotic theory for time series binary choice models with nonstationary explanatory variables generated as integrated processes. Both logit and probit models are covered. The maximum likelihood (ML) estimator is consistent but a new phenomenon arises is its limit distribution theory. The estimator consists of a mixture of two components, one of which is parallel to and the other orthogonal to the direction of the true parameter vector, with the latter being the principal component. The ML estimator is shown to converge at a rate of n~(3/4) along its principal component but has the slower rate of n~(1/4) convergence in all other directions. This is the first instance known to the authors of multiple convergence rates in models where the regressors have the same (full rank) stochastic order and where the parameters appear in linear forms of these regressors. It is a consequence of the fact that the estimating equations involve nonlinear integrable transformations of linear forms of integrated processes as well as polynomials in these processes, and the asymptotic behavior of these elements is quite different. The limit distribution of the ML estimator is derived and is shown to be a mixture of two mixed normal distributions with mixing variates that are dependent upon Brownian local time as well as Brownian motion. It is further shown that the sample proportion of binary choices follows an arc sine law and therefore spends most of its time in the neighborhood of zero or unity. The result has implications for policy decision making that involves binary choices and where the decisions depend on economic fundamentals that involve stochastic trends. Our limit theory shows that, in such conditions, policy is likely to manifest streams of little intervention or intensive intervention.
机译:本文针对时间序列二元选择模型开发了一种渐进理论,该模型具有作为集成过程生成的非平稳解释变量。 logit模型和probit模型都包括在内。最大似然(ML)估计量是一致的,但是出现了一种新现象,即其极限分布理论。估计器由两个分量的混合物组成,其中一个分量与真实参数矢量的方向平行,另一个与正交。 ML估计器显示为沿其主成分以n〜(3/4)的速率收敛,但在所有其他方向上的收敛速度却较慢,为n〜(1/4)。这是模型中多个收敛速度作者的第一个实例,在这些模型中,回归变量具有相同(满秩)随机顺序,并且参数以线性回归形式出现。这是由于以下事实:估计方程包含积分过程的线性形式以及这些过程中的多项式的非线性可积分变换,并且这些元素的渐近行为完全不同。得出ML估计量的极限分布,并显示为两个混合正态分布的混合,混合分布取决于布朗本地时间和布朗运动。进一步表明,二元选择的样本比例遵循反正弦定律,因此大部分时间都花在零或单位附近。结果对涉及二元选择的决策制定有影响,并且决策取决于涉及随机趋势的经济基本面。我们的极限理论表明,在这种情况下,政策很可能表现出很少的干预或强烈干预。

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