Model selection and local geometry

01/25/2018
by   Robin J. Evans, et al.
0

We consider problems in model selection caused by the geometry of models close to their points of intersection. In some cases, including common classes of causal or graphical models as well as time series models, distinct models may nevertheless have identical tangent spaces. This has two immediate consequences: first, in order to obtain constant power to reject one model in favour of another we need local alternative hypotheses that decrease to the null at a slower rate than the usual parametric n^-1/2 (typically we will require n^-1/4 or slower); in other words, to distinguish between the models we need large effect sizes or very large sample sizes. Second, we show that under even weaker conditions on the tangent cone, models in these classes cannot be made simultaneously convex by a reparameterization. This shows that Bayesian network models, amongst others, cannot be learned directly with a convex method similar to the graphical lasso. However, we are able to use our results to suggest methods for model selection that learn the tangent space directly, rather than the model itself. In particular, we give a generic algorithm for learning discrete ancestral graph models, which includes Bayesian network models.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
11/13/2018

Towards Characterising Bayesian Network Models under Selection

Real-life statistical samples are often plagued by selection bias, which...
research
04/28/2020

Bayesian Model Selection on Random Networks

A general Bayesian framework for model selection on random network model...
research
01/20/2020

Investigation of Patient-sharing Networks Using a Bayesian Network Model Selection Approach for Congruence Class Models

A Bayesian approach to conduct network model selection is presented for ...
research
01/07/2023

Model selection for network data based on spectral information

We introduce a new methodology for model selection in the context of mod...
research
04/14/2010

Spatio-Temporal Graphical Model Selection

We consider the problem of estimating the topology of spatial interactio...
research
02/25/2016

Modeling cumulative biological phenomena with Suppes-Bayes Causal Networks

Several diseases related to cell proliferation are characterized by the ...
research
11/07/2017

Loglinear model selection and human mobility

Methods for selecting loglinear models were among Steve Fienberg's resea...

Please sign up or login with your details

Forgot password? Click here to reset