Abstract

Homelessness has been a persistent social concern in the United States. A combination of political and economic events since the 1960s has driven increases in poverty that, by 1991, had surpassed 1928 depression era levels in some accounts. This paper explores how the emerging field of behavioral economics can use machine learning and data science methods to explore preventative responses to homelessness. In this study, machine learning data mining strategies, specifically K-means cluster analysis and later, decision trees, were used to understand how environmental factors and resultant behaviors can contribute to the experience of homelessness. Prevention of the first homeless event is especially important as studies show that if a person has experienced homelessness once, they are 2.6 times more likely to have another homeless episode. Study findings demonstrate that when someone is at risk for not being able to pay utility bills at the same time as they experience challenges with two or more of the other social determinants of health, the individual is statistically significantly more likely to have their first homeless event. Additionally, for men over 50 who are not in the workforce, have a health hardship, and experience two or more other social determinants of health hardships at the same time, the individual has a high statistically significant probability of experiencing homelessness for the first time.

Highlights

  • Client records included in the study were identified as having a homeless event, or not, by cross-referencing 2-1-1’s client intake database with the HUD Homeless Management Information System (HMIS) database

  • Preventing the initial experience of homelessness is especially important as prior research demonstrates that once a person has experienced homelessness, the person is 2.6 times more likely to experience homelessness again [32]

  • The findings of this study demonstrated statistically significant early indicators of a first homeless event using data collected from a Collective Impact Data Sharing Hub, 2-1-1 San Diego’s Community Information Exchange, pointing to the following conclusions and recommendations for future research

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Summary

Introduction

Homelessness continues to be a significant social issue in the United States. A combination of political and economic factors has compounded over time to contribute to the changing landscape of poverty in America [1,2]. Those experiencing extreme poverty teeter at the edge of homelessness. Gaps between the rich and the poor slowly began to rise, and rates of homelessness grew to unprecedented levels in the mid-1970s, with higher rates of poverty and homelessness concentrated in America’s cities [1,3]. The resulting increase in the population of the working poor was hit hard in the 2000s as the combined effect of two global recessions increased rates of poverty to levels not seen since the 1928 Depression [1,2,4]

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