From Observational Studies to Causal Rule Mining
Jiuyong Li, Thuc Duy Le, Lin Liu, Jixue Liu, Zhou Jin, Bingyu Sun,, Saisai Ma

TL;DR
This paper introduces causal rules (CRs), a novel method combining association rule mining and observational studies to efficiently discover causal relationships in large, high-dimensional datasets, including multi-variable causes.
Contribution
It proposes the concept of causal rules and an algorithm for mining them, effectively integrating association rules with causal inference to handle high-dimensional data.
Findings
CR mining is faster than traditional causal discovery methods.
CRs can identify causes with multiple variables, unlike other methods.
Experimental results show CRs are effective and competitive in accuracy.
Abstract
Randomised controlled trials (RCTs) are the most effective approach to causal discovery, but in many circumstances it is impossible to conduct RCTs. Therefore observational studies based on passively observed data are widely accepted as an alternative to RCTs. However, in observational studies, prior knowledge is required to generate the hypotheses about the cause-effect relationships to be tested, hence they can only be applied to problems with available domain knowledge and a handful of variables. In practice, many data sets are of high dimensionality, which leaves observational studies out of the opportunities for causal discovery from such a wealth of data sources. In another direction, many efficient data mining methods have been developed to identify associations among variables in large data sets. The problem is, causal relationships imply associations, but the reverse is not…
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