299 research outputs found
Surrogate Outcomes and Transportability
Identification of causal effects is one of the most fundamental tasks of
causal inference. We consider an identifiability problem where some
experimental and observational data are available but neither data alone is
sufficient for the identification of the causal effect of interest. Instead of
the outcome of interest, surrogate outcomes are measured in the experiments.
This problem is a generalization of identifiability using surrogate experiments
and we label it as surrogate outcome identifiability. We show that the concept
of transportability provides a sufficient criteria for determining surrogate
outcome identifiability for a large class of queries.Comment: This is the version published in the International Journal of
Approximate Reasonin
Causal Effect Identification from Multiple Incomplete Data Sources: A General Search-Based Approach
Peer reviewe
Identifiability and transportability in dynamic causal networks
In this paper we propose a causal analog to the purely observational Dynamic Bayesian Networks, which we call Dynamic Causal Networks.
We provide a sound and complete algorithm for identification of Dynamic Causal Networks, namely, for computing the effect of an intervention or experiment, based on passive observations only, whenever possible. We note the existence of two types of confounder variables that affect in substantially different ways the identification
procedures, a distinction with no analog in either Dynamic Bayesian Networks or standard causal graphs. We further propose a procedure
for the transportability of causal effects in Dynamic Causal Network settings, where the result of causal experiments in a source domain may be used for the identification of causal effects in a target domain.Preprin
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