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Main Authors: Chen, Tong, Slone, Joshua, Amorim, Gustavo, Shaw, Pamela A., Shepherd, Bryan E., Lumley, Thomas
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2605.15802
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author Chen, Tong
Slone, Joshua
Amorim, Gustavo
Shaw, Pamela A.
Shepherd, Bryan E.
Lumley, Thomas
author_facet Chen, Tong
Slone, Joshua
Amorim, Gustavo
Shaw, Pamela A.
Shepherd, Bryan E.
Lumley, Thomas
contents In regression models fitted to data from complex survey designs, sampling weights often incorporate non-essential variation, inflating variance estimates. Stabilized weights mitigate this issue by adjusting sampling weights to account for variation explained by covariates. In the context of two-phase sampling, we evaluate the performance of optimal stabilized weights and propose combining the stabilized weight estimator with generalized raking, a class of efficient design-based estimators. This combination improves efficiency by reducing unnecessary weight variation and leveraging information from auxiliary variables. We show this combination can be implemented using the standard statistical package that handles two-phase samples and generalized raking. Simulation studies demonstrate that the proposed estimator enhances precision under realistic two-phase designs, though efficiency gains may be limited in highly informative designs. The developed methods were applied to a large multinational two-phase study of Kaposi sarcoma among people living with HIV.
format Preprint
id arxiv_https___arxiv_org_abs_2605_15802
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Generalized raking and stabilized weights for regression modeling in two-phase samples
Chen, Tong
Slone, Joshua
Amorim, Gustavo
Shaw, Pamela A.
Shepherd, Bryan E.
Lumley, Thomas
Methodology
In regression models fitted to data from complex survey designs, sampling weights often incorporate non-essential variation, inflating variance estimates. Stabilized weights mitigate this issue by adjusting sampling weights to account for variation explained by covariates. In the context of two-phase sampling, we evaluate the performance of optimal stabilized weights and propose combining the stabilized weight estimator with generalized raking, a class of efficient design-based estimators. This combination improves efficiency by reducing unnecessary weight variation and leveraging information from auxiliary variables. We show this combination can be implemented using the standard statistical package that handles two-phase samples and generalized raking. Simulation studies demonstrate that the proposed estimator enhances precision under realistic two-phase designs, though efficiency gains may be limited in highly informative designs. The developed methods were applied to a large multinational two-phase study of Kaposi sarcoma among people living with HIV.
title Generalized raking and stabilized weights for regression modeling in two-phase samples
topic Methodology
url https://arxiv.org/abs/2605.15802