Learning LWF Chain Graphs: an Order Independent Algorithm

05/27/2020
by   Mohammad ali Javidian, et al.
21

LWF chain graphs combine directed acyclic graphs and undirected graphs. We present a PC-like algorithm that finds the structure of chain graphs under the faithfulness assumption to resolve the problem of scalability of the proposed algorithm by Studeny (1997). We prove that our PC-like algorithm is order dependent, in the sense that the output can depend on the order in which the variables are given. This order dependence can be very pronounced in high-dimensional settings. We propose two modifications of the PC-like algorithm that remove part or all of this order dependence. Simulation results under a variety of settings demonstrate the competitive performance of the PC-like algorithms in comparison with the decomposition-based method, called LCD algorithm, proposed by Ma et al. (2008) in low-dimensional settings and improved performance in high-dimensional settings.

READ FULL TEXT

page 12

page 18

research
10/01/2019

Order-Independent Structure Learning of Multivariate Regression Chain Graphs

This paper deals with multivariate regression chain graphs (MVR CGs), wh...
research
02/24/2020

AMP Chain Graphs: Minimal Separators and Structure Learning Algorithms

We address the problem of finding a minimal separator in an Andersson-Ma...
research
11/14/2012

Order-independent constraint-based causal structure learning

We consider constraint-based methods for causal structure learning, such...
research
06/16/2018

The Reduced PC-Algorithm: Improved Causal Structure Learning in Large Random Networks

We consider the task of estimating a high-dimensional directed acyclic g...
research
09/25/2011

Towards Optimal Learning of Chain Graphs

In this paper, we extend Meek's conjecture (Meek 1997) from directed and...
research
06/03/2018

Structural Learning of Multivariate Regression Chain Graphs via Decomposition

We extend the decomposition approach for learning Bayesian networks (BN)...

Please sign up or login with your details

Forgot password? Click here to reset