Generates a list of instrumental variables that can be used to infer the total effect
of an exposure on an outcome in the presence of latent confounding, under linearity
assumptions.
name of the exposure variable. If not given (default), then the
exposure variable is supposed to be defined in the graph itself. Only a single
exposure variable and a single outcome variable supported.
outcome
name of the outcome variable, also taken from the graph if not given.
Only a single outcome variable is supported.
References
B. van der Zander, J. Textor and M. Liskiewicz (2015),
Efficiently Finding Conditional Instruments for Causal Inference.
In Proceedings of the 24th International Joint Conference on
Artificial Intelligence (IJCAI 2015), pp. 3243-3249. AAAI Press, 2015.