Simple Estimators for Invertible Index Models

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초록

This article considers estimation of the unknown linear index coefficients of a model in which a number of nonparametrically identified reduced form parameters are assumed to be smooth and invertible function of one or more linear indices. The results extend the previous literature by allowing the number of reduced form parameters to exceed the number of indices (i.e., the indices are "overdetermined" by the reduced form parameters. The estimator of the unknown index coefficients (up to scale) is the eigenvector of a matrix (defined in terms of a first-step nonparametric estimator of the reduced form parameters) corresponding to its smallest (in magnitude) eigenvalue. Under suitable conditions, the proposed estimator is shown to be root-n-consistent and asymptotically normal, and under additional restrictions an efficient choice of a "weight matrix" is derived in the overdetermined case.

키워드

Invertible modelsMultinomial responseSemiparametric estimationSingle index modelsSEMIPARAMETRIC ESTIMATIONMAXIMUM-LIKELIHOODREGRESSION
제목
Simple Estimators for Invertible Index Models
저자
Ahn, HyungtaikIchimura, HidehikoPowell, James L.Ruud, Paul A.
DOI
10.1080/07350015.2017.1379405
발행일
2018-01-02
유형
Article
저널명
Journal of Business and Economic Statistics
36
1
페이지
1 ~ 10