Active and Passive Causal Inference Learning

08/18/2023
by   Daniel Jiwoong Im, et al.
0

This paper serves as a starting point for machine learning researchers, engineers and students who are interested in but not yet familiar with causal inference. We start by laying out an important set of assumptions that are collectively needed for causal identification, such as exchangeability, positivity, consistency and the absence of interference. From these assumptions, we build out a set of important causal inference techniques, which we do so by categorizing them into two buckets; active and passive approaches. We describe and discuss randomized controlled trials and bandit-based approaches from the active category. We then describe classical approaches, such as matching and inverse probability weighting, in the passive category, followed by more recent deep learning based algorithms. By finishing the paper with some of the missing aspects of causal inference from this paper, such as collider biases, we expect this paper to provide readers with a diverse set of starting points for further reading and research in causal inference and discovery.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/05/2020

A Survey on Causal Inference

Causal inference is a critical research topic across many domains, such ...
research
12/12/2022

Instrumental Variables in Causal Inference and Machine Learning: A Survey

Causal inference is the process of using assumptions, study designs, and...
research
01/16/2020

Combining Offline Causal Inference and Online Bandit Learning for Data Driven Decisions

A fundamental question for companies is: How to make good decisions with...
research
02/28/2022

Estimating causal effects with optimization-based methods: A review and empirical comparison

In the absence of randomized controlled and natural experiments, it is n...
research
07/11/2022

Positivity: Identifiability and Estimability

Positivity, the assumption that every unique combination of confounding ...
research
07/20/2022

The tropical geometry of causal inference for extremes

Extreme value statistics is the max analogue of classical statistics, wh...
research
11/11/2018

Explaining Deep Learning Models using Causal Inference

Although deep learning models have been successfully applied to a variet...

Please sign up or login with your details

Forgot password? Click here to reset