Open Access
December 2018 High-dimensional consistency in score-based and hybrid structure learning
Preetam Nandy, Alain Hauser, Marloes H. Maathuis
Ann. Statist. 46(6A): 3151-3183 (December 2018). DOI: 10.1214/17-AOS1654

Abstract

Main approaches for learning Bayesian networks can be classified as constraint-based, score-based or hybrid methods. Although high-dimensional consistency results are available for constraint-based methods like the PC algorithm, such results have not been proved for score-based or hybrid methods, and most of the hybrid methods have not even shown to be consistent in the classical setting where the number of variables remains fixed and the sample size tends to infinity. In this paper, we show that consistency of hybrid methods based on greedy equivalence search (GES) can be achieved in the classical setting with adaptive restrictions on the search space that depend on the current state of the algorithm. Moreover, we prove consistency of GES and adaptively restricted GES (ARGES) in several sparse high-dimensional settings. ARGES scales well to sparse graphs with thousands of variables and our simulation study indicates that both GES and ARGES generally outperform the PC algorithm.

Citation

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Preetam Nandy. Alain Hauser. Marloes H. Maathuis. "High-dimensional consistency in score-based and hybrid structure learning." Ann. Statist. 46 (6A) 3151 - 3183, December 2018. https://doi.org/10.1214/17-AOS1654

Information

Received: 1 May 2016; Revised: 1 June 2017; Published: December 2018
First available in Project Euclid: 7 September 2018

zbMATH: 06968612
MathSciNet: MR3851768
Digital Object Identifier: 10.1214/17-AOS1654

Subjects:
Primary: 62-09 , 62F12 , 62H12

Keywords: Bayesian network , consistency , directed acyclic graph (DAG) , greedy equivalence search (GES) , High-dimensional data , ‎hybrid method , linear structural equation model (linear SEM) , score-based method , structure learning

Rights: Copyright © 2018 Institute of Mathematical Statistics

Vol.46 • No. 6A • December 2018
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