Litcius/Paper detail

Feature Selection for Efficient Local-to-global Bayesian Network Structure Learning

Kui Yu, Zhaolong Ling, Lin Liu, Peipei Li, Hao Wang, Jiuyong Li

2023ACM Transactions on Knowledge Discovery from Data10 citationsDOI

Abstract

Local-to-global learning approach plays an essential role in Bayesian network (BN) structure learning. Existing local-to-global learning algorithms first construct the skeleton of a DAG (directed acyclic graph) by learning the MB (Markov blanket) or PC (parents and children) of each variable in a dataset, then orient edges in the skeleton. However, existing MB or PC learning methods are often computationally expensive especially with a large-sized BN, resulting in inefficient local-to-global learning algorithms. To tackle the problem, in this article, we link feature selection with local BN structure learning and develop an efficient local-to-global learning approach using filtering feature selection. Specifically, we first analyze the rationale of the well-known Minimum-Redundancy and Maximum-Relevance (MRMR) feature selection approach for learning a PC set of a variable. Based on the analysis, we propose an efficient F2SL (feature selection-based structure learning) approach to local-to-global BN structure learning. The F2SL approach first employs the MRMR approach to learn the skeleton of a DAG, then orients edges in the skeleton. Employing independence tests or score functions for orienting edges, we instantiate the F2SL approach into two new algorithms, F2SL-c (using independence tests) and F2SL-s (using score functions). Compared to the state-of-the-art local-to-global BN learning algorithms, the experiments validated that the proposed algorithms in this article are more efficient and provide competitive structure learning quality than the compared algorithms.

Topics & Concepts

Markov blanketArtificial intelligenceMachine learningFeature selectionComputer scienceBayesian networkFeature (linguistics)Conditional independenceDirected acyclic graphOnline machine learningInstance-based learningGraphFeature learningMarkov chainSemi-supervised learningAlgorithmTheoretical computer scienceMarkov modelMarkov propertyLinguisticsPhilosophyBayesian Modeling and Causal InferenceRough Sets and Fuzzy LogicData Mining Algorithms and Applications
Feature Selection for Efficient Local-to-global Bayesian Network Structure Learning | Litcius