Causal inference in networks with continuous disorders
Zhao Jun
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Zhao Jun: Nankai University
Chinese Stata Conference 2024 from Stata Users Group
Abstract:
In the case of perturbations when a treatment of one unit also affects the outcomes of other units, the SUTVA assumption of traditional causal inference is violated. When perturbations work, policy evaluation relies mainly on the assumptions of randomized experiments under cluster perturbations and binary treatments. Instead, we consider non-experimental treatments under continuous treatments and network perturbations. Speci
Date: 2024-10-03
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Persistent link: https://EconPapers.repec.org/RePEc:boc:chin24:15
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