Benchmarking Constraint-Based Bayesian Structure Learning Algorithms: Role of Network Topology
Radha Nagarajan, Marco Scutari

TL;DR
This study investigates how different network topologies affect the performance of constraint-based Bayesian structure learning algorithms, revealing that sensitivity decreases significantly from sub-linear to super-linear DAG structures.
Contribution
It highlights the critical role of network topology in benchmarking constraint-based Bayesian structure learning algorithms, which was previously underexplored.
Findings
Sensitivity decreases from sub-linear to super-linear topologies across algorithms.
Network topology significantly impacts algorithm performance.
Results are consistent across different network sizes and noise levels.
Abstract
Modeling the associations between real world entities from their multivariate cross-sectional profiles can provide cues into the concerted working of these entities as a system. Several techniques have been proposed for deciphering these associations including constraint-based Bayesian structure learning (BSL) algorithms that model them as directed acyclic graphs. Benchmarking these algorithms have typically focused on assessing the variation in performance measures such as sensitivity as a function of the dimensionality represented by the number of nodes in the DAG, and sample size. The present study elucidates the importance of network topology in benchmarking exercises. More specifically, it investigates variations in sensitivity across distinct network topologies while constraining the nodes, edges, and sample-size to be identical, eliminating these as potential confounders.…
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Taxonomy
TopicsRough Sets and Fuzzy Logic · Bayesian Modeling and Causal Inference · Advanced Graph Neural Networks
