Bounds on Causal Effects and Application to High Dimensional Data

06/23/2021
by   Ang Li, et al.
13

This paper addresses the problem of estimating causal effects when adjustment variables in the back-door or front-door criterion are partially observed. For such scenarios, we derive bounds on the causal effects by solving two non-linear optimization problems, and demonstrate that the bounds are sufficient. Using this optimization method, we propose a framework for dimensionality reduction that allows one to trade bias for estimation power, and demonstrate its performance using simulation studies.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/19/2019

Causal Discovery with General Non-Linear Relationships Using Non-Linear ICA

We consider the problem of inferring causal relationships between two or...
research
08/17/2020

Estimating Causal Effects with the Neural Autoregressive Density Estimator

Estimation of causal effects is fundamental in situations were the under...
research
06/17/2021

Causal Bias Quantification for Continuous Treatment

In this work we develop a novel characterization of marginal causal effe...
research
04/03/2023

The synthetic instrument: From sparse association to sparse causation

In many observational studies, researchers are often interested in study...
research
03/28/2018

Estimating causal effects of time-dependent exposures on a binary endpoint in a high-dimensional setting

Recently, the intervention calculus when the DAG is absent (IDA) method ...
research
03/12/2023

Causal Mediation Analysis with a Three-Dimensional Image Mediator

Causal mediation analysis is increasingly abundant in biology, psycholog...
research
08/06/2021

Identifiable Energy-based Representations: An Application to Estimating Heterogeneous Causal Effects

Conditional average treatment effects (CATEs) allow us to understand the...

Please sign up or login with your details

Forgot password? Click here to reset