A Framework for Inferring Causality from Multi-Relational Observational Data using Conditional Independence
Sudeepa Roy, Babak Salimi

TL;DR
This paper introduces a formal framework for causal inference from multi-relational observational data, leveraging conditional independence and graphical models to infer causality without controlled experiments.
Contribution
It formalizes causal analysis on joined relational data using the strong ignorability assumption and conditional independences, integrating database, statistical, and graphical model concepts.
Findings
Framework for causal inference on relational data
Use of conditional independences in base relations
Guidelines for inferring causality in observational datasets
Abstract
The study of causality or causal inference - how much a given treatment causally affects a given outcome in a population - goes way beyond correlation or association analysis of variables, and is critical in making sound data driven decisions and policies in a multitude of applications. The gold standard in causal inference is performing "controlled experiments", which often is not possible due to logistical or ethical reasons. As an alternative, inferring causality on "observational data" based on the "Neyman-Rubin potential outcome model" has been extensively used in statistics, economics, and social sciences over several decades. In this paper, we present a formal framework for sound causal analysis on observational datasets that are given as multiple relations and where the population under study is obtained by joining these base relations. We study a crucial condition for inferring…
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Taxonomy
TopicsBayesian Modeling and Causal Inference · Advanced Causal Inference Techniques · Statistical Methods and Inference
MethodsCausal inference
