Comparing Causal Bayesian Networks Estimated from Data
Sisi Ma, Roshan Tourani

TL;DR
This paper introduces new methods to compare causal networks across different systems, improving accuracy when data quality varies.
Contribution
The novel contribution is introducing bootstrap and equal sample size resampling methods to better compare causal networks.
Findings
Bootstrap and resampling methods outperformed the naive approach in simulated experiments.
The new methods showed improved performance on real-world biomedical datasets.
Performance varied with network structures and sample sizes.
Abstract
The knowledge of the causal mechanisms underlying one single system may not be sufficient to answer certain questions. One can gain additional insights from comparing and contrasting the causal mechanisms underlying multiple systems and uncovering consistent and distinct causal relationships. For example, discovering common molecular mechanisms among different diseases can lead to drug repurposing. The problem of comparing causal mechanisms among multiple systems is non-trivial, since the causal mechanisms are usually unknown and need to be estimated from data. If we estimate the causal mechanisms from data generated from different systems and directly compare them (the naive method), the result can be sub-optimal. This is especially true if the data generated by the different systems differ substantially with respect to their sample sizes. In this case, the quality of the estimated…
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Taxonomy
TopicsBayesian Modeling and Causal Inference · Computational Drug Discovery Methods · Advanced Causal Inference Techniques
