Published April 12, 2017 | Version v20170412
Software Open

Replication Archive for "Earnings Inequality and Mobility Trends in the United States: Nationally Representative Estimates from Longitudinally Linked Employer-Employee Data"

  • 1. U.S. Census Bureau
  • 2. Cornell University and U.S. Census Bureau
  • 3. CapitalOne

Description

by John M. Abowd, Kevin L. McKinney, and Nellie L. Zhao. Full Paper available for download at: http://www.nber.org/papers/w23224 and http://digitalcommons.ilr.cornell.edu/ldi/34/

Notes

Abowd acknowledges direct support from NSF Grants SES-0339191, CNS-0627680, SES-0922005, TC-1012593, and SES- 1131848. This paper was written while the the third author was a Pathways Intern at the U.S. Census Bureau. We have benefited from discussions with David Card, John Eltinge, Patrick Kline, Francis Kramarz, Kristin McCue, Ian Schmutte, Lars Vilhuber, participants at the NBER conference that preceded this volume, the editors of this volume, Edward Lazear and Kathryn Shaw, and two anonymous referees. Sara Sullivan edited the final manuscript. Any opinions and conclusions expressed herein are those of the authors and do not necessarily represent the views of the U.S. Census Bureau or other sponsors. All results have been reviewed to ensure that no confidential information is disclosed. This research uses data from the Census Bureau's Longitudinal Employer-Household Dynamics Program, which was partially supported by the following National Science Foundation Grants: SES-9978093, SES-0339191 and ITR-0427889; National Institute on Aging Grant AG018854; and grants from the Alfred P. Sloan Foundation.

Files

labordynamicsinstitute/Earnings-Inequality-Replication-v20170412.zip

Files (168.8 kB)

Additional details

Funding

NCRN-MN: Cornell Census-NSF Research Node: Integrated Research Support, Training and Data Documentation 1131848
National Science Foundation
EITM: Developing the Tools to Understand Human Performance: An Empirical Infrastructure to Foster Research Collaboration 0339191
National Science Foundation
CT-T: Collaborative Research: Preserving Utility While Ensuring Privacy for Linked Data 0627680
National Science Foundation
Social Science Gateway to TeraGrid 0922005
National Science Foundation