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NONPARAMETRIC IDENTIFICATION USING INSTRUMENTAL VARIABLES: SUFFICIENT CONDITIONS FOR COMPLETENESS

机译:使用乐器变量的非参数识别:完整性的充分条件

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This paper provides sufficient conditions for the nonparametric identification of the regression function m(.) in a regression model with an endogenous regressor x and an instrumental variable z. It has been shown that the identification of the regression function from the conditional expectation of the dependent variable on the instrument relies on the completeness of the distribution of the endogenous regressor conditional on the instrument, i.e., f (x vertical bar z). We show that (1) if the deviation of the conditional density f (x vertical bar z(k)) from a known complete sequence of functions is less than a sequence of values determined by the complete sequence in some distinct sequence {z(k) : k = 1,2,3,...} converging to z(0), then f (x vertical bar z) itself is complete, and (2) if the conditional density f (x vertical bar z) can form a linearly independent sequence {f (. vertical bar z(k)) : k = 1,2,...} in some distinct sequence {z(k) : k = 1,2,3,...} converging to z(0) and its relative deviation from a known complete sequence of functions under some norm is finite then f (x vertical bar z) itself is complete. We use these general results to provide specific sufficient conditions for completeness in three different specifications of the relationship between the endogenous regressor x and the instrumental variable z.
机译:本文提供了具有内源回归模型中的回归函数M(。)的非参数标识的足够条件。已经表明,从仪器上的相关变量的条件期望识别回归函数依赖于仪器上的内源性回归定向的分布的完整性,即F(X垂直条Z)。我们展示(1)如果从已知的完整函数序列的条件密度f(x垂直条z(k))的偏差小于在某种不同序列中由完整序列确定的值序列{z(k ):k = 1,2,3,...}会聚到z(0),然后f(x垂直条z)本身完成,并且(2)如果条件密度f(x垂直条z)可以形成以某种不同的序列{z(k):k = 1,2,3,...}在一些不同的独立序列{f(。垂直条z(k)):k = 1,2,...}融合到Z(0)及其与某些规范下的已知完整功能序列的相对偏差是有限的,然后F(x垂直条Z)本身是完整的。我们使用这些一般结果在内源回归X和仪器变量Z之间的三种不同规范中为完整的三种不同规范提供特定的足够条件。

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