Quantile regression under misspecification, with an application to the U.S. wage structure

  • 0 Ratings
  • 0 Want to read
  • 0 Currently reading
  • 0 Have read
Quantile regression under misspecification, w ...
Joshua David Angrist
Not in Library

My Reading Lists:

Create a new list

Check-In

×Close
Add an optional check-in date. Check-in dates are used to track yearly reading goals.
Today

  • 0 Ratings
  • 0 Want to read
  • 0 Currently reading
  • 0 Have read

Buy this book

Last edited by MARC Bot
December 13, 2020 | History

Quantile regression under misspecification, with an application to the U.S. wage structure

  • 0 Ratings
  • 0 Want to read
  • 0 Currently reading
  • 0 Have read

"Quantile regression(QR) fits a linear model for conditional quantiles, just as ordinary least squares (OLS) fits a linear model for conditional means. An attractive feature of OLS is that it gives the minimum mean square error linear approximation to the conditional expectation function even when the linear model is misspecified. Empirical research using quantile regression with discrete covariates suggests that QR may have a similar property, but the exact nature of the linear approximation has remained elusive. In this paper, we show that QR can be interpreted as minimizing a weighted mean-squared error loss function for specification error. The weighting function is an average density of the dependent variable near the true conditional quantile. The weighted least squares interpretation of QR is used to derive an omitted variables bias formula and a partial quantile correlation concept, similar to the relationship between partial correlation and OLS. We also derive general asymptotic results for QR processes allowing for misspecification of the conditional quantile function, extending earlier results from a single quantile to the entire process. The approximation properties of QR are illustrated through an analysis of the wage structure and residual inequality in US Census data for 1980, 1990, and 2000. The results suggest continued residual inequality growth in the 1990s, primarily in the upper half of the wage distribution and for college graduates"--National Bureau of Economic Research web site.

Publish Date
Language
English

Buy this book

Edition Availability
Cover of: Quantile regression under misspecification, with an application to the U.S. wage structure
Quantile regression under misspecification, with an application to the U.S. wage structure
2004, National Bureau of Economic Research
Electronic resource in English

Add another edition?

Book Details


Edition Notes

Includes bibliographical references.
Title from PDF file as viewed on 1/13/2005.
Also available in print.
System requirements: Adobe Acrobat Reader.
Mode of access: World Wide Web.

Published in
Cambridge, MA
Series
NBER working paper series ;, working paper 10428, Working paper series (National Bureau of Economic Research : Online) ;, working paper no. 10428.

Classifications

Library of Congress
HB1

The Physical Object

Format
Electronic resource

ID Numbers

Open Library
OL3476221M
LCCN
2005615686

Community Reviews (0)

Feedback?
No community reviews have been submitted for this work.

Lists

This work does not appear on any lists.

History

Download catalog record: RDF / JSON
December 13, 2020 Edited by MARC Bot import existing book
April 16, 2010 Edited by WorkBot update details
December 10, 2009 Created by WorkBot add works page