Wolf-Branigin, Michael2009-02-112009-02-112002https://hdl.handle.net/1920/3445http://tbf.coe.wayne.edu/jmasm/A spatial analytic methodology incorporating true locations is demonstrated using Monte Carlo simulations as a complement to current psychometric and quality of life indices for measuring community inclusion. Moran 'sl,a measure of spatial autocorrelation, is used to determine spatial dependencies in housing patterns for multiple variables, including family/friends involvement in future planning, home size, and earned income. Simulations revealed no significant spatial autocorrelation, which is a socially desirable result for housing locations for people with disabilities. Assessing the absence of clustering provides a promising methodology for measuring community inclusion.en-USSpatial analysisMonte Carlo methodsCommunity inclusionSpatial randomnessApplying Spatial Randomness To Community InclusionArticle