Validating the “Genuine Pipeline” to Limit Social Desirability Bias in Survey Estimates of Voter Turnout

Author:

DeBell Matthew1ORCID,Hillygus D Sunshine2ORCID,Shaw Daron R3,Valentino Nicholas A4

Affiliation:

1. Institute for Research in the Social Sciences, Stanford University Senior Research Scholar and Director of Stanford Operations for the American National Election Studies, , Stanford, CA, US

2. Department of Political Science and Sanford School of Public Policy; and Director of the Initiative on Survey Methodology, Duke University Professor, , Durham, NC, US

3. Department of Government, University of Texas at Austin Distinguished Teaching Professor and Frank C. Erwin, Jr. Chair of State Politics, , Austin, TX, US

4. Department of Political Science and Research Professor, Institute for Social Research, University of Michigan Professor, , Ann Arbor, MI, US

Abstract

Abstract It is well documented that survey overreporting of voter turnout due to social desirability bias threatens inference about political behavior. This paper reports four studies that contained question wording experiments to test questions designed to minimize that bias using a “pipeline” approach. The “pipeline” informs survey participants that researchers can perform vote validation to verify turnout self-reports. This approach reduced self-reported turnout by 5.7 points in the 2020 American National Election Study, which represents a majority of the estimated overreporting bias. It reduced reported turnout by 4 points in two nonprobability samples. No effect was found in a third nonprobability study with Amazon Mechanical Turk workers. Validated vote data also confirm that the pipeline approach reduced overreporting. We tested heterogeneous effects for sophistication and several other variables, but results were inconclusive. The pipeline approach reduces overreporting of voter turnout and produces more accurate estimates of voters’ characteristics.

Funder

National Science Foundation

Publisher

Oxford University Press (OUP)

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