Estimating complex causal effects from incomplete observational data

03/05/2014
by   Juha Karvanen, et al.
0

Despite the major advances taken in causal modeling, causality is still an unfamiliar topic for many statisticians. In this paper, it is demonstrated from the beginning to the end how causal effects can be estimated from observational data assuming that the causal structure is known. To make the problem more challenging, the causal effects are highly nonlinear and the data are missing at random. The tools used in the estimation include causal models with design, causal calculus, multiple imputation and generalized additive models. The main message is that a trained statistician can estimate causal effects by judiciously combining existing tools.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/10/2023

Identification and Estimation of Causal Effects with Confounders Missing Not at Random

Making causal inferences from observational studies can be challenging w...
research
11/13/2012

Study design in causal models

The causal assumptions, the study design and the data are the elements r...
research
07/28/2022

Measuring Causal Effects of Data Statistics on Language Model's `Factual' Predictions

Large amounts of training data are one of the major reasons for the high...
research
02/01/2019

Causal Simulations for Uplift Modeling

Uplift modeling requires experimental data, preferably collected in rand...
research
01/10/2013

A Calculus for Causal Relevance

This paper presents a sound and completecalculus for causal relevance, b...
research
05/18/2020

Towards Causal Inference for Spatio-Temporal Data: Conflict and Forest Loss in Colombia

In many data scientific problems, we are interested not only in modeling...
research
10/24/2021

Problems with information theoretic approaches to causal learning

The language of information theory is favored in both causal reasoning a...

Please sign up or login with your details

Forgot password? Click here to reset