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Econometrics-Statistics Joint Seminar Speaker: Joel Horowitz, 05/10/2016

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Tuesday May 10 2016

Econometrics-Statistics Joint Seminar Speaker: Joel Horowitz, 05/10/2016

11:40am @ 498 Uris Hall
In Statistics Seminars

Cornell's Economics and Statistics departments will host a joint seminar with guest speaker, Joel Horowitz, Charles E. and Emma H. Morrison Professor of Market Economics at Northwestern University.

Title: Nonparametric Estimation and Inference under Shape Restrictions

Abstract: Economic theory often provides shape restrictions on functions of interest in applications, such as monotonicity, convexity, non-increasing (non-decreasing) returns to scale, or the Slutsky inequality of consumer theory; but economic theory does not provide finite-dimensional parametric models. This motivates nonparametric estimation under shape restrictions. Nonparametric estimates are often very noisy. Shape restrictions stabilize nonparametric estimates without imposing arbitrary restrictions, such as additivity or a single-index structure that may be inconsistent with economic theory and the data. This paper explains how to estimate and obtain an asymptotic uniform confidence band for a conditional mean function under possibly nonlinear shape restrictions, such as the Slutsky inequality. The results of Monte Carlo experiments illustrate the finite-sample performance of the method, and an empirical example illustrates its use in an application.

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