Sobolev Estimation of Approximate Regressions
研究在模型设定错误下,用索博列夫范数衡量回归函数及其导数的最佳逼近,证明多项式近似时导数相等仅当解释变量正态分布,并据此提出设定检验。
This paper focuses on the estimation of an approximated function and its derivatives. Let us assume that the data-generating process can be described by a family of regression models , where a is a multi-index of differentiation such that D α ϕ(x i ) is the αth derivative of ϕ( x i ) with respect to x i . The estimated model is characterized by a family D α f(X i |θ), where D α f(X i |θ) is the αth derivative of f(x i ,|θ) and θ is an unknown parameter. The model is in general misspecified; that is, there is no θ such that D α f(X i |6) is equal to D α ϕ(X i ). Three different problems are discussed. First, the asymptotic behavior of the seemingly unrelated regression estimator of θ is shown to achieve the best approximation, in the Sobolev norm sense, of ϕ by an element of (f(X i |θ)|θ ε Θ). Second, in the case of polynomial approximations, the expected derivatives of the limit of the estimated regression and of the true regression are proved to be equal if and only if the set of explanatory variables has a normal distribution. Third, different sets of α are introduced, and the different limits of estimated regressions characterized by these sets are proved to be equal if and only if the explanatory variables have a normal distribution. This result leads to a specification test.