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  1. Federated Causal Inference in Heterogeneous Observational Data

    Analyzing observational data from multiple sources can be useful for increasing statistical power to detect a treatment effect; however, practical constraints such as privacy considerations may restrict individual-level information sharing across... mehr

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    Analyzing observational data from multiple sources can be useful for increasing statistical power to detect a treatment effect; however, practical constraints such as privacy considerations may restrict individual-level information sharing across data sets. This paper develops federated methods that only utilize summary-level information from multiple heterogeneous data sets. Our federated methods provide doubly-robust point estimates of treatment effects as well as variance estimates. We derive the asymptotic distributions of our federated estimators, which are shown to be asymptotically equivalent to the corresponding estimators from the combined individual-level data. We show that to achieve these properties, federated methods should be adjusted based on conditions such as whether models are correctly specified and stable across heterogeneous data sets

     

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    Quelle: Verbundkataloge
    Sprache: Englisch
    Medientyp: Buch (Monographie)
    Format: Online
    Weitere Identifier:
    Schriftenreihe: Stanford University Graduate School of Business Research Paper
    Schlagworte: Causal Inference; Propensity Scores; Federated Learning; Multiple Data Sets
    Weitere Schlagworte: Array
    Umfang: 1 Online-Ressource (63 p)
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    Nach Informationen von SSRN wurde die ursprüngliche Fassung des Dokuments July 16, 2021 erstellt