eff2 {eff2}R Documentation

eff2: efficient least squares for estimating total causal effects

Description

Estimate a total causal effect from observational data under linearity and causal sufficiency. The observational data is supposed to be generated from a linear structural equation model (SEM) with independent and additive noise. The underlying causal DAG associated the SEM is required to be known up to a maximally oriented partially directed graph (MPDAG), which is a general class of graphs consisting of both directed and undirected edges, including CPDAGs (i.e., essential graphs) and DAGs. Such graphs are usually obtained with structure learning algorithms with added background knowledge. The program is able to estimate every identified effect, including single and multiple treatment variables. Moreover, the resulting estimate has the minimal asymptotic covariance (and hence shortest confidence intervals) among all estimators that are based on the sample covariance.

Details

Use estimateEffect to estimate a total effect.

Use isIdentified to determine if a total effect can be identified.

Author(s)

Maintainer: Richard Guo ricguo@uw.edu (ORCID)

See Also

Useful links:


[Package eff2 version 1.0.2 Index]