In the instrumental variable quantile regression (IVQR) model of Chernozhukov and Hansen (2005), a one-dimensional unobserved rank variable monotonically determines a single potential outcome. In practice, when researchers are interested in multiple outcomes, it is common to estimate separate IVQR models for each of them. This approach implicitly assumes that the rank variable in each regression affects only its associated outcome, without influencing others. In reality, however, outcomes are often jointly determined by multiple latent factors, inducing structural correlations across equations. To address this limitation, we propose a nonlinear instrumental variable model that accommodates multivariate unobserved heterogeneity, where each component of the latent vector acts as a rank variable corresponding to an observed outcome. When both the treatment and the instrument are discrete, we show that the structural function in our model is locally identified under a sufficiently strong positive correlation between the treatment and the instrument.
翻译:在Chernozhukov和Hansen(2005)提出的工具变量分位数回归(IVQR)模型中,一个一维不可观测的秩变量单调地决定单一潜在结果。实践中,当研究者关注多个结果时,通常会对每个结果分别估计独立的IVQR模型。这种方法隐含假设每个回归中的秩变量仅影响其关联结果,而不影响其他结果。然而现实中,结果往往由多个潜在因素共同决定,从而在方程间产生结构性关联。为克服这一局限,我们提出了一种能够容纳多元不可观测异质性的非线性工具变量模型,其中潜向量的每个分量作为对应观测结果的秩变量。当处理变量和工具变量均为离散时,我们证明在处理变量与工具变量之间存在足够强的正相关条件下,该模型中的结构函数具有局部可识别性。