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A New Family of Random Graphs for Testing Spatial Segregation

Authors :
Ceyhan, E.
Priebe, C. E.
Marchette, D. J.
Source :
Canadian Journal of Statistics (2007), 35(1):27-50
Publication Year :
2008

Abstract

We discuss a graph-based approach for testing spatial point patterns. This approach falls under the category of data-random graphs, which have been introduced and used for statistical pattern recognition in recent years. Our goal is to test complete spatial randomness against segregation and association between two or more classes of points. To attain this goal, we use a particular type of parametrized random digraph called proximity catch digraph (PCD) which is based based on relative positions of the data points from various classes. The statistic we employ is the relative density of the PCD. When scaled properly, the relative density of the PCD is a $U$-statistic. We derive the asymptotic distribution of the relative density, using the standard central limit theory of $U$-statistics. The finite sample performance of the test statistic is evaluated by Monte Carlo simulations, and the asymptotic performance is assessed via Pitman's asymptotic efficiency, thereby yielding the optimal parameters for testing. Furthermore, the methodology discussed in this article is also valid for data in multiple dimensions.<br />Comment: 31 pages, 15 figures

Details

Database :
arXiv
Journal :
Canadian Journal of Statistics (2007), 35(1):27-50
Publication Type :
Report
Accession number :
edsarx.0802.0615
Document Type :
Working Paper