Inflection points in community-level homeless rates
Published in (Submitted for review), 2019
Statistical models of community-level homeless rates typically assume a linear relationship to covariates. This linear model assumption precludes the possibility of inflection points in homeless rates – thresholds in quantifiable metrics of a community that, once breached, are associated with large increases in homelessness. In this paper, we identify points of structural change in the relationship between homeless rates and community-level measures of housing affordability and extreme poverty. We utilize the Ewens-Pitman attraction distribution to develop a Bayesian nonparametric mixture model in which clusters of communities with similar covariates share common patterns of variation in homeless rates. A main finding of the study is that the expected homeless rate in a community increases sharply once median rental costs exceed 32% of median income, providing statistical evidence for the widely used definition of a housing cost burden at 30% of income. Our analysis also identifies clusters of communities that exhibit distinct geographic patterns and yield insight into the homelessness and housing affordability crisis unfolding on both coasts of the United States.