Causal Calculus in the Presence of Cycles, Latent Confounders and Selection Bias

01/02/2019
by   Patrick Forré, et al.
0

We prove the main rules of causal calculus (also called do-calculus) for interventional structural causal models (iSCMs), a generalization of a recently proposed general class of non-/linear structural causal models that allow for cycles, latent confounders and arbitrary probability distributions. We also generalize adjustment criteria and formulas from the acyclic setting to the general one (i.e. iSCMs). Such criteria then allow to estimate (conditional) causal effects from observational data that was (partially) gathered under selection bias and cycles. This generalizes the backdoor criterion, the selection-backdoor criterion and extensions of these to arbitrary iSCMs. Together, our results thus enable causal reasoning in the presence of cycles, latent confounders and selection bias.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/05/2018

A Constraint-Based Algorithm For Causal Discovery with Cycles, Latent Variables and Selection Bias

Causal processes in nature may contain cycles, and real datasets may vio...
research
07/09/2018

Constraint-based Causal Discovery for Non-Linear Structural Causal Models with Cycles and Latent Confounders

We address the problem of causal discovery from data, making use of the ...
research
06/13/2012

On Identifying Total Effects in the Presence of Latent Variables and Selection bias

Assume that cause-effect relationships between variables can be describe...
research
02/04/2019

Causal Effect Identification from Multiple Incomplete Data Sources: A General Search-based Approach

Causal effect identification considers whether an interventional probabi...
research
06/17/2021

Causal Bias Quantification for Continuous Treatment

In this work we develop a novel characterization of marginal causal effe...
research
08/06/2021

Causal Inference Theory with Information Dependency Models

Inferring the potential consequences of an unobserved event is a fundame...
research
02/28/2018

Separators and Adjustment Sets in Causal Graphs: Complete Criteria and an Algorithmic Framework

Principled reasoning about the identifiability of causal effects from no...

Please sign up or login with your details

Forgot password? Click here to reset