Learning Binary Bayesian Networks in Polynomial Time and Sample Complexity

03/12/2018
by   Adarsh Barik, et al.
0

We consider the problem of structure learning for binary Bayesian networks. Our approach is to recover the true parents and children for each node first and then combine the results to recover the skeleton. We do not assume any specific probability distribution for the nodes. Rather, we show that if the probability distribution satisfies certain conditions then we can exactly recover the parents and children of a node by performing l1-regularized linear regression with sufficient number of samples. The sample complexity of our proposed approach depends logarithmically on the number of nodes in the Bayesian network. Furthermore, our method runs in polynomial time.

READ FULL TEXT
research
03/03/2017

Learning Identifiable Gaussian Bayesian Networks in Polynomial Time and Sample Complexity

Learning the directed acyclic graph (DAG) structure of a Bayesian networ...
research
04/06/2017

On the Statistical Efficiency of Compositional Nonparametric Prediction

In this paper, we propose a compositional nonparametric method in which ...
research
02/13/2013

On the Sample Complexity of Learning Bayesian Networks

In recent years there has been an increasing interest in learning Bayesi...
research
06/02/2017

Learning causal Bayes networks using interventional path queries in polynomial time and sample complexity

Causal discovery from empirical data is a fundamental problem in many sc...
research
06/27/2012

On the Number of Samples Needed to Learn the Correct Structure of a Bayesian Network

Bayesian Networks (BNs) are useful tools giving a natural and compact re...
research
06/23/2016

Robust Learning of Fixed-Structure Bayesian Networks

We investigate the problem of learning Bayesian networks in an agnostic ...
research
05/29/2019

Learning Bayesian Networks with Low Rank Conditional Probability Tables

In this paper, we provide a method to learn the directed structure of a ...

Please sign up or login with your details

Forgot password? Click here to reset