Computation-free Nonparametric testing for Local and Global Spatial Autocorrelation with application to the Canadian Electorate

12/15/2020
by   Adam B. Kashlak, et al.
0

Measures of local and global spatial association are key tools for exploratory spatial data analysis. Many such measures exist including Moran's I, Geary's C, and the Getis-Ord G and G^* statistics. A parametric approach to testing for significance relies on strong assumptions, which are often not met by real world data. Alternatively, the most popular nonparametric approach, the permutation test, imposes a large computational burden especially for massive graphical networks. Hence, we propose a computation-free approach to nonparametric permutation testing for local and global measures of spatial autocorrelation stemming from generalizations of the Khintchine inequality from functional analysis and the theory of L^p spaces. Our methodology is demonstrated on the results of the 2019 federal Canadian election in the province of Alberta. We recorded the percentage of the vote gained by the conservative candidate in each riding. This data is not normal, and the sample size is fixed at n=34 ridings making the parametric approach invalid. In contrast, running a classic permutation test for every riding, for multiple test statistics, with various neighbourhood structures, and multiple testing correction would require the simulation of millions of permutations. We are able to achieve similar statistical power on this dataset to the permutation test without the need for tedious simulation. We also consider data simulated across the entire electoral map of Canada.

READ FULL TEXT

page 11

page 13

research
01/04/2020

Analytic Permutation Testing via Kahane–Khintchine Inequalities

The permutation test is a versatile type of exact nonparametric signific...
research
10/20/2021

Local Statistics for Spatial Panel Models with Application to the US Electorate

The spatial panel regression model has shown great success in modelling ...
research
06/21/2019

New methods for multiple testing in permutation inference for the general linear model

Permutation methods are commonly used to test significance of regressors...
research
12/18/2022

A Permutation-Free Kernel Independence Test

In nonparametric independence testing, we observe i.i.d. data {(X_i,Y_i)...
research
06/18/2020

Homogeneity Test for Functional Data basedon Data-Depth Plots

One of the classic concerns in statistics is determining if two samples ...
research
02/12/2015

Speeding up Permutation Testing in Neuroimaging

Multiple hypothesis testing is a significant problem in nearly all neuro...
research
03/04/2017

Accelerating Permutation Testing in Voxel-wise Analysis through Subspace Tracking: A new plugin for SnPM

Permutation testing is a non-parametric method for obtaining the max nul...

Please sign up or login with your details

Forgot password? Click here to reset