Decision Theoretic Foundations of Graphical Model Selection

01/30/2013
by   Paola Sebastiani, et al.
0

This paper describes a decision theoretic formulation of learning the graphical structure of a Bayesian Belief Network from data. This framework subsumes the standard Bayesian approach of choosing the model with the largest posterior probability as the solution of a decision problem with a 0-1 loss function and allows the use of more general loss functions able to trade-off the complexity of the selected model and the error of choosing an oversimplified model. A new class of loss functions, called disintegrable, is introduced, to allow the decision problem to match the decomposability of the graphical model. With this class of loss functions, the optimal solution to the decision problem can be found using an efficient bottom-up search strategy.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
01/31/2020

Evolving Loss Functions With Multivariate Taylor Polynomial Parameterizations

Loss function optimization for neural networks has recently emerged as a...
research
06/07/2021

Error Loss Networks

A novel model called error loss network (ELN) is proposed to build an er...
research
06/02/2021

General Bayesian Loss Function Selection and the use of Improper Models

Statisticians often face the choice between using probability models or ...
research
02/24/2022

Loss as the Inconsistency of a Probabilistic Dependency Graph: Choose Your Model, Not Your Loss Function

In a world blessed with a great diversity of loss functions, we argue th...
research
05/12/2019

Note on Thompson sampling for large decision problems

There is increasing interest in using streaming data to inform decision ...
research
09/15/2022

Omnipredictors for Constrained Optimization

The notion of omnipredictors (Gopalan, Kalai, Reingold, Sharan and Wiede...
research
05/10/2021

Search Algorithms and Loss Functions for Bayesian Clustering

We propose a randomized greedy search algorithm to find a point estimate...

Please sign up or login with your details

Forgot password? Click here to reset