Spatial Hyperspheric Models for Compositional Data

Mevin Hooten Co-Author
The University of Texas At Austin
 
Nicholas Calzada Co-Author
The University of Texas At Austin
 
Timothy Keitt Co-Author
University of Texas at Austin
 
Michael Schwob First Author
Virginia Tech
 
Michael Schwob Presenting Author
Virginia Tech
 
Monday, Aug 4: 12:05 PM - 12:20 PM
1319 
Contributed Papers 
Music City Center 

Description

Compositional data are an increasingly prevalent data source in spatial statistics. Analysis of such data is typically done on log-ratio transformations or via Dirichlet regression. However, these approaches often make unnecessarily strong assumptions (e.g., strictly positive components, exclusively negative correlations). An alternative approach uses square-root transformed compositions and directional distributions. Such distributions naturally allow for zero-valued components and positive correlations, yet they may include support outside the non-negative orthant and are not generative for compositional data. To overcome this challenge, we truncate the elliptically symmetric angular Gaussian (ESAG) distribution to the non-negative orthant. Additionally, we propose a spatial hyperspheric regression that contains fixed and random multivariate spatial effects. The proposed model also contains a term that can be used to propagate uncertainty that may arise from precursory stochastic models (i.e., machine learning classification). We used our model in a simulation study and for a spatial analysis of classified bioacoustic signals of the Dryobates pubescens (downy woodpecker).

Keywords

Bayesian

generative

hyperspheric regression

uncertainty propagation

compositional data

directional data 

Main Sponsor

Section on Statistics and the Environment