Variational Mixture Models with Gamma or inverse-Gamma components

07/26/2016
by   A. Llera, et al.
0

Mixture models with Gamma and or inverse-Gamma distributed mixture components are useful for medical image tissue segmentation or as post-hoc models for regression coefficients obtained from linear regression within a Generalised Linear Modeling framework (GLM), used in this case to separate stochastic (Gaussian) noise from some kind of positive or negative "activation" (modeled as Gamma or inverse-Gamma distributed). To date, the most common choice in this context it is Gaussian/Gamma mixture models learned through a maximum likelihood (ML) approach; we recently extended such algorithm for mixture models with inverse-Gamma components. Here, we introduce a fully analytical Variational Bayes (VB) learning framework for both Gamma and/or inverse-Gamma components. We use synthetic and resting state fMRI data to compare the performance of the ML and VB algorithms in terms of area under the curve and computational cost. We observed that the ML Gaussian/Gamma model is very expensive specially when considering high resolution images; furthermore, these solutions are highly variable and they occasionally can overestimate the activations severely. The Bayesian Gauss-Gamma is in general the fastest algorithm but provides too dense solutions. The maximum likelihood Gaussian/inverse-Gamma is also very fast but provides in general very sparse solutions. The variational Gaussian/inverse-Gamma mixture model is the most robust and its cost is acceptable even for high resolution images. Further, the presented methodology represents an essential building block that can be directly used in more complex inference tasks, specially designed to analyse MRI-fMRI data; such models include for example analytical variational mixture models with adaptive spatial regularization or better source models for new spatial blind source separation approaches.

READ FULL TEXT
research
10/17/2014

Inference and Mixture Modeling with the Elliptical Gamma Distribution

We study modeling and inference with the Elliptical Gamma Distribution (...
research
03/12/2019

The Inverse first passage time method for a two compartment model as a tool to relate Inverse Gaussian and Gamma spike distributions

In a previous paper (Lansky, Sacerdote, Zucca (2016)) we related the sto...
research
10/25/2021

Faster estimation for constrained gamma mixture models using closed-form estimators

Mixture models are useful in a wide array of applications to identify su...
research
03/14/2011

Constrained Mixture Models for Asset Returns Modelling

The estimation of asset return distributions is crucial for determining ...
research
01/28/2020

Subband Weighting for Binaural Speech Source Localization

We consider the task of speech source localization from a bin-aural reco...
research
07/05/2020

Blind Inverse Gamma Correction with Maximized Differential Entropy

Unwanted nonlinear gamma distortion frequently occurs in a great diversi...
research
11/23/2022

A Generator for Generalized Inverse Gaussian Distributions

We propose a new generator for the generalized inverse Gaussian (GIG) di...

Please sign up or login with your details

Forgot password? Click here to reset