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Bibliographic Details
Main Authors: Li, Sijia, Gilbert, Peter B., Duan, Rui, Luedtke, Alex
Format: Preprint
Published: 2023
Subjects:
Online Access:https://arxiv.org/abs/2308.14836
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author Li, Sijia
Gilbert, Peter B.
Duan, Rui
Luedtke, Alex
author_facet Li, Sijia
Gilbert, Peter B.
Duan, Rui
Luedtke, Alex
contents We introduce a new data fusion method that utilizes multiple data sources to estimate a smooth, finite-dimensional parameter. Most existing methods only make use of fully aligned data sources that share common conditional distributions of one or more variables of interest. However, in many settings, the scarcity of fully aligned sources can make existing methods require unduly large sample sizes to be useful. Our approach enables the incorporation of weakly aligned data sources that are not perfectly aligned, provided their degree of misalignment is known up to finite-dimensional parameters. {We quantify the additional efficiency gains achieved through the integration of these weakly aligned sources. We characterize the semiparametric efficiency bound and provide a general means to construct estimators achieving these efficiency gains.} We illustrate our results by fusing data from two harmonized HIV monoclonal antibody prevention efficacy trials to study how a neutralizing antibody biomarker associates with HIV genotype.
format Preprint
id arxiv_https___arxiv_org_abs_2308_14836
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Data fusion using weakly aligned sources
Li, Sijia
Gilbert, Peter B.
Duan, Rui
Luedtke, Alex
Methodology
We introduce a new data fusion method that utilizes multiple data sources to estimate a smooth, finite-dimensional parameter. Most existing methods only make use of fully aligned data sources that share common conditional distributions of one or more variables of interest. However, in many settings, the scarcity of fully aligned sources can make existing methods require unduly large sample sizes to be useful. Our approach enables the incorporation of weakly aligned data sources that are not perfectly aligned, provided their degree of misalignment is known up to finite-dimensional parameters. {We quantify the additional efficiency gains achieved through the integration of these weakly aligned sources. We characterize the semiparametric efficiency bound and provide a general means to construct estimators achieving these efficiency gains.} We illustrate our results by fusing data from two harmonized HIV monoclonal antibody prevention efficacy trials to study how a neutralizing antibody biomarker associates with HIV genotype.
title Data fusion using weakly aligned sources
topic Methodology
url https://arxiv.org/abs/2308.14836