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Moving Beyond Linear Regression: Implementing and Interpreting Quantile Regression Models With Fixed Effects

DSEID
DSEID-001-4874058
DOI
10.1177/00491241211036165
Journal
Sociological Methods & Research
Publisher
SAGE Publications
Published
2024-5
Status
metadata_only

Abstract

Quantile regression (QR) provides an alternative to linear regression (LR) that allows for the estimation of relationships across the distribution of an outcome. However, as highlighted in recent research on the motherhood penalty across the wage distribution, different procedures for conditional and unconditional quantile regression (CQR, UQR) often result in divergent findings that are not always well understood. In light of such discrepancies, this paper reviews how to implement and interpret a range of LR, CQR, and UQR models with fixed effects. It also discusses the use of Quantile Treatment Effect (QTE) models as an alternative to overcome some of the limitations of CQR and UQR models. We then review how to interpret results in the presence of fixed effects based on a replication of Budig and Hodges’s work on the motherhood penalty using NLSY79 data.

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Metadata

Title
Moving Beyond Linear Regression: Implementing and Interpreting Quantile Regression Models With Fixed Effects
Delta ID
DSEID-001-4874058
Authors
Fernando Rios-Avila, Michelle Lee Maroto
Abstract source
crossref
Source URL
None
Access
closed_or_uncertain
Licence
unknown
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Record history

WhenEventFieldOldNew
2026-06-18 19:37:53.011249+00:00identifier_assignedDSEIDDSEID-001-4874058