This paper gives a solution to the problem of estimating coefficients of index models, through the estimation of the density-weighted average derivative of a general regression function. We show how a normalized version of the density-weighted average derivatives can be estimated by certain linear instrumental variables coefficients. Both of the estimators are computationally simple, root-N-consistent and asymptotically normal; their statistical properties do not rely on functional form assumptions on the regression function or the distribution of the data. The estimators, based on sample analogues of the product moment representation of the average derivative, are constructed using nonparametric kernel estimators of the density of the regressors. Asymptotic normality is established using extensions of classical U-statistic theorems, and asymptotic bias is reduced through use of a higher-order kernel. Consistent estimators of the asymptotic variance-covariance matrices of the estimators are given, and a limited Monte Carlo simulation is used to study the practical performance of the procedures.
MLA
Stock, James H., et al. “Semiparametric Estimation of Index Coefficients.” Econometrica, vol. 57, .no 6, Econometric Society, 1989, pp. 1403-1430, https://www.jstor.org/stable/1913713
Chicago
Stock, James H., James L. Powell, and Thomas M. Stoker. “Semiparametric Estimation of Index Coefficients.” Econometrica, 57, .no 6, (Econometric Society: 1989), 1403-1430. https://www.jstor.org/stable/1913713
APA
Stock, J. H., Powell, J. L., & Stoker, T. M. (1989). Semiparametric Estimation of Index Coefficients. Econometrica, 57(6), 1403-1430. https://www.jstor.org/stable/1913713
The Executive Committee of the Econometric Society has approved an increase in the submission fees for papers in Econometrica. Starting January 1, 2025, the fee for new submissions to Econometrica will be US$125 for regular members and US$50 for student members.
By clicking the "Accept" button or continuing to browse our site, you agree to first-party and session-only cookies being stored on your device. Cookies are used to optimize your experience and anonymously analyze website performance and traffic.