Gaussian-Dirichlet Random Fields for Inference over High Dimensional Categorical Observations

03/26/2020
by   John E. San Soucie, et al.
0

We propose a generative model for the spatio-temporal distribution of high dimensional categorical observations. These are commonly produced by robots equipped with an imaging sensor such as a camera, paired with an image classifier, potentially producing observations over thousands of categories. The proposed approach combines the use of Dirichlet distributions to model sparse co-occurrence relations between the observed categories using a latent variable, and Gaussian processes to model the latent variable's spatio-temporal distribution. Experiments in this paper show that the resulting model is able to efficiently and accurately approximate the temporal distribution of high dimensional categorical measurements such as taxonomic observations of microscopic organisms in the ocean, even in unobserved (held out) locations, far from other samples. This work's primary motivation is to enable deployment of informative path planning techniques over high dimensional categorical fields, which until now have been limited to scalar or low dimensional vector observations.

READ FULL TEXT

page 1

page 4

page 5

page 6

research
11/09/2020

High-dimensional modeling of spatial and spatio-temporal conditional extremes using INLA and the SPDE approach

The conditional extremes framework allows for event-based stochastic mod...
research
02/14/2017

Gaussian-Dirichlet Posterior Dominance in Sequential Learning

We consider the problem of sequential learning from categorical observat...
research
06/23/2023

Prediction under Latent Subgroup Shifts with High-Dimensional Observations

We introduce a new approach to prediction in graphical models with laten...
research
05/03/2023

A Bayesian approach to identify changepoints in spatio-temporal ordered categorical data: An application to COVID-19 data

Although there is substantial literature on identifying structural chang...
research
11/02/2019

Beta DVBF: Learning State-Space Models for Control from High Dimensional Observations

Learning a model of dynamics from high-dimensional images can be a core ...
research
03/07/2015

Latent Gaussian Processes for Distribution Estimation of Multivariate Categorical Data

Multivariate categorical data occur in many applications of machine lear...
research
01/26/2018

Classification of sparsely labeled spatio-temporal data through semi-supervised adversarial learning

In recent years, Generative Adversarial Networks (GAN) have emerged as a...

Please sign up or login with your details

Forgot password? Click here to reset