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Autores principales: Yu, Facheng, Qi, Zhen, Zhang, Yuqian
Formato: Preprint
Publicado: 2024
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Acceso en línea:https://arxiv.org/abs/2411.15691
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author Yu, Facheng
Qi, Zhen
Zhang, Yuqian
author_facet Yu, Facheng
Qi, Zhen
Zhang, Yuqian
contents In modern data analysis, information is frequently collected from multiple sources, often leading to challenges such as data heterogeneity and imbalanced sample sizes across datasets. Robust and efficient data integration methods are crucial for improving the generalization and transportability of statistical findings. In this work, we address scenarios where, in addition to having full access to individualized data from a primary source, supplementary covariate information from external sources is also available. While traditional data integration methods typically require individualized covariates from external sources, such requirements can be impractical due to limitations related to accessibility, privacy, storage, and cost. Instead, we propose novel data integration techniques that rely solely on external summary statistics, such as sample means and covariances, to construct robust estimators for the mean outcome under both homogeneous and heterogeneous data settings. Additionally, we extend this framework to causal inference, enabling the estimation of average treatment effects for both generalizability and transportability.
format Preprint
id arxiv_https___arxiv_org_abs_2411_15691
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Data integration using covariate summaries from external sources
Yu, Facheng
Qi, Zhen
Zhang, Yuqian
Methodology
Statistics Theory
In modern data analysis, information is frequently collected from multiple sources, often leading to challenges such as data heterogeneity and imbalanced sample sizes across datasets. Robust and efficient data integration methods are crucial for improving the generalization and transportability of statistical findings. In this work, we address scenarios where, in addition to having full access to individualized data from a primary source, supplementary covariate information from external sources is also available. While traditional data integration methods typically require individualized covariates from external sources, such requirements can be impractical due to limitations related to accessibility, privacy, storage, and cost. Instead, we propose novel data integration techniques that rely solely on external summary statistics, such as sample means and covariances, to construct robust estimators for the mean outcome under both homogeneous and heterogeneous data settings. Additionally, we extend this framework to causal inference, enabling the estimation of average treatment effects for both generalizability and transportability.
title Data integration using covariate summaries from external sources
topic Methodology
Statistics Theory
url https://arxiv.org/abs/2411.15691