MetaCI: Meta-Learning for Causal Inference in a Heterogeneous Population

12/09/2019
by   Ankit Sharma, et al.
0

Performing inference on data obtained through observational studies is becoming extremely relevant due to the widespread availability of data in fields such as healthcare, education, retail, etc. Furthermore, this data is accrued from multiple homogeneous subgroups of a heterogeneous population, and hence, generalizing the inference mechanism over such data is essential. We propose the MetaCI framework with the goal of answering counterfactual questions in the context of causal inference (CI), where the factual observations are obtained from several homogeneous subgroups. While the CI network is designed to generalize from factual to counterfactual distribution in order to tackle covariate shift, MetaCI employs the meta-learning paradigm to tackle the shift in data distributions between training and test phase due to the presence of heterogeneity in the population, and due to drifts in the target distribution, also known as concept shift. We benchmark the performance of the MetaCI algorithm using the mean absolute percentage error over the average treatment effect as the metric, and demonstrate that meta initialization has significant gains compared to randomly initialized networks, and other methods.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/12/2016

Learning Representations for Counterfactual Inference

Observational studies are rising in importance due to the widespread acc...
research
02/22/2023

Quantifying Causes of Arctic Amplification via Deep Learning based Time-series Causal Inference

The warming of the Arctic, also known as Arctic amplification, is led by...
research
04/28/2020

MultiMBNN: Matched and Balanced Causal Inference with Neural Networks

Causal inference (CI) in observational studies has received a lot of att...
research
09/05/2023

s-ID: Causal Effect Identification in a Sub-Population

Causal inference in a sub-population involves identifying the causal eff...
research
08/24/2019

Using the Prognostic Score to Reduce Heterogeneity in Observational Studies

In large sample observational studies, the control population often grea...
research
06/13/2016

Estimating individual treatment effect: generalization bounds and algorithms

There is intense interest in applying machine learning to problems of ca...
research
06/14/2022

Effect of money heterogeneity on resource dependency in complex networks

Exchange of resources among individual components of a system is fundame...

Please sign up or login with your details

Forgot password? Click here to reset