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Fixed-Population Causal Inference for Models of Equilibrium

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  • Konrad Menzel

Abstract

In contrast to problems of interference in (exogenous) treatments, models of interference in unit-specific (endogenous) outcomes do not usually produce a reduced-form representation where outcomes depend on other units' treatment status only at a short network distance, or only through a known exposure mapping. This remains true if the structural mechanism depends on outcomes of peers only at a short network distance, or through a known exposure mapping. In this paper, we first define causal estimands that are identified and estimable from a single experiment on the network under minimal assumptions on the structure of interference, and which represent average partial causal responses which generally vary with other global features of the realized assignment. Under a fixed-population, design-based approach, we show unbiasedness and consistency for inverse-probability weighting (IPW) estimators for those causal parameters from a randomized experiment on a single network. We also analyze more closely the case of marginal interventions in a model of equilibrium with smooth response functions where we can recover LATE-type weighted averages of derivatives of those response functions. Under additional structural assumptions, these "agnostic" causal estimands can be combined to recover model parameters, but also retain their less restrictive causal interpretation.

Suggested Citation

  • Konrad Menzel, 2025. "Fixed-Population Causal Inference for Models of Equilibrium," Papers 2501.19394, arXiv.org, revised Mar 2025.
  • Handle: RePEc:arx:papers:2501.19394
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    4. Imbens,Guido W. & Rubin,Donald B., 2015. "Causal Inference for Statistics, Social, and Biomedical Sciences," Cambridge Books, Cambridge University Press, number 9780521885881, January.
    5. Claudia Allende & Francisco Gallego & Christopher Neilson, 2019. "Approximating The Equilibrium Effects of Informed School Choice," Working Papers 2019-16, Princeton University. Economics Department..
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