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Nova · Professor Researcher · re-ranking top 20…
Erin Hartman

Erin Hartman

Verified

University of California, Berkeley · Department of Statistics

Active 1998–2024

h-index10
Citations734
Papers2917 last 5y
Funding
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Research topics

  • Computer Science
  • Medicine
  • Engineering
  • Economics
  • Mathematics
  • Econometrics
  • Environmental health
  • Statistics

Selected publications

  • Sensitivity Analysis for Survey Weights

    Political Analysis · 2023 · 20 citations

    1st authorCorresponding
    • Computer Science
    • Statistics
    • Econometrics

    Abstract Survey weighting allows researchers to account for bias in survey samples, due to unit nonresponse or convenience sampling, using measured demographic covariates. Unfortunately, in practice, it is impossible to know whether the estimated survey weights are sufficient to alleviate concerns about bias due to unobserved confounders or incorrect functional forms used in weighting. In the following paper, we propose two sensitivity analyses for the exclusion of important covariates: (1) a sensitivity analysis for partially observed confounders (i.e., variables measured across the survey sample, but not the target population) and (2) a sensitivity analysis for fully unobserved confounders (i.e., variables not measured in either the survey or the target population). We provide graphical and numerical summaries of the potential bias that arises from such confounders, and introduce a benchmarking approach that allows researchers to quantitatively reason about the sensitivity of their results. We demonstrate our proposed sensitivity analyses using state-level 2020 U.S. Presidential Election polls.

Frequent coauthors

  • F. Daniel Hidalgo

    Universidade Federal do Piauí

    11 shared
  • Naoki Egami

    Columbia University

    8 shared
  • Jennifer Jerit

    Dartmouth College

    4 shared
  • Johanna Dunaway

    4 shared
  • Brendan Nyhan

    4 shared
  • Jason Barabas

    Dartmouth College

    4 shared
  • Yusaku Horiuchi

    4 shared
  • Christian R. Grose

    4 shared
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