Learning Structures of Bayesian Networks for Variable Groups

08/31/2015
by   Pekka Parviainen, et al.
0

Bayesian networks, and especially their structures, are powerful tools for representing conditional independencies and dependencies between random variables. In applications where related variables form a priori known groups, chosen to represent different "views" to or aspects of the same entities, one may be more interested in modeling dependencies between groups of variables rather than between individual variables. Motivated by this, we study prospects of representing relationships between variable groups using Bayesian network structures. We show that for dependency structures between groups to be expressible exactly, the data have to satisfy the so-called groupwise faithfulness assumption. We also show that one cannot learn causal relations between groups using only groupwise conditional independencies, but also variable-wise relations are needed. Additionally, we present algorithms for finding the groupwise dependency structures.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/23/2018

Inference in Graded Bayesian Networks

Machine learning provides algorithms that can learn from data and make i...
research
07/09/2014

Counting Markov Blanket Structures

Learning Markov blanket (MB) structures has proven useful in performing ...
research
06/13/2018

Pattern Dependence Detection using n-TARP Clustering

Consider an experiment involving a potentially small number of subjects....
research
02/06/2019

Bidirectional Inference Networks: A Class of Deep Bayesian Networks for Health Profiling

We consider the problem of inferring the values of an arbitrary set of v...
research
05/11/2014

Learning modular structures from network data and node variables

A standard technique for understanding underlying dependency structures ...
research
01/20/2023

On the Foundations of Cycles in Bayesian Networks

Bayesian networks (BNs) are a probabilistic graphical model widely used ...

Please sign up or login with your details

Forgot password? Click here to reset