"Ideal Parent" Structure Learning for Continuous Variable Networks

07/11/2012
by   Iftach Nachman, et al.
0

In recent years, there is a growing interest in learning Bayesian networks with continuous variables. Learning the structure of such networks is a computationally expensive procedure, which limits most applications to parameter learning. This problem is even more acute when learning networks with hidden variables. We present a general method for significantly speeding the structure search algorithm for continuous variable networks with common parametric distributions. Importantly, our method facilitates the addition of new hidden variables into the network structure efficiently. We demonstrate the method on several data sets, both for learning structure on fully observable data, and for introducing new hidden variables during structure search.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
01/10/2013

Learning the Dimensionality of Hidden Variables

A serious problem in learning probabilistic models is the presence of hi...
research
06/27/2012

Convex Structure Learning for Bayesian Networks: Polynomial Feature Selection and Approximate Ordering

We present a new approach to learning the structure and parameters of a ...
research
12/08/2015

Learning Discrete Bayesian Networks from Continuous Data

Real data often contains a mixture of discrete and continuous variables,...
research
01/23/2013

Discovering the Hidden Structure of Complex Dynamic Systems

Dynamic Bayesian networks provide a compact and natural representation f...
research
12/12/2012

Interpolating Conditional Density Trees

Joint distributions over many variables are frequently modeled by decomp...
research
05/18/2017

Scalable Exact Parent Sets Identification in Bayesian Networks Learning with Apache Spark

In Machine Learning, the parent set identification problem is to find a ...
research
11/10/2017

Lurking Variable Detection via Dimensional Analysis

Lurking variables represent hidden information, and preclude a full unde...

Please sign up or login with your details

Forgot password? Click here to reset