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Main Authors: Rodriguez, Maria Y., Dohler, Ehren, Phillips, Jon, Villodas, Melissa, Vegara, Voltaire, Joseph, Kenny, Wilson, Amy
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2512.12919
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author Rodriguez, Maria Y.
Dohler, Ehren
Phillips, Jon
Villodas, Melissa
Vegara, Voltaire
Joseph, Kenny
Wilson, Amy
author_facet Rodriguez, Maria Y.
Dohler, Ehren
Phillips, Jon
Villodas, Melissa
Vegara, Voltaire
Joseph, Kenny
Wilson, Amy
contents Open-source data and tools are lauded as essential for replicable and usable social science, though little is known about their use in resource constrained human service provision. This paper examines the challenges and opportunities of open-source tools and data in human service development by using both to forecast failure to pay eviction filings in Bronx County, NY. We use zip code level data from the Housing Data Coalition, the American Community Survey 5-year estimates, and DeepMaps Model of the Labor Force to forecast rates through July 2021. We employ multilevel (MLM) and exponential smoothing (ETS) models using the R project for Statistical Computing, an oft used open-source statistical software. We compare our results to what happened during the same period, to illustrate the efficacy of the open-source tools and techniques employed. We argue open-source data and software may facilitate rapid analysis of public data - a much-needed ability in human service intervention development under increasingly constrained resources - but find public data are limited by the information they reliably capture, limiting their utility by a non-trivial margin of error. The manuscript concludes by considering lessons for human service organizations with limited analytical resources and a vested interest in low-resourced communities.
format Preprint
id arxiv_https___arxiv_org_abs_2512_12919
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Open Source Software and Data for Human Service Development: A Case Study on Predicting Housing Instability
Rodriguez, Maria Y.
Dohler, Ehren
Phillips, Jon
Villodas, Melissa
Vegara, Voltaire
Joseph, Kenny
Wilson, Amy
Computers and Society
Open-source data and tools are lauded as essential for replicable and usable social science, though little is known about their use in resource constrained human service provision. This paper examines the challenges and opportunities of open-source tools and data in human service development by using both to forecast failure to pay eviction filings in Bronx County, NY. We use zip code level data from the Housing Data Coalition, the American Community Survey 5-year estimates, and DeepMaps Model of the Labor Force to forecast rates through July 2021. We employ multilevel (MLM) and exponential smoothing (ETS) models using the R project for Statistical Computing, an oft used open-source statistical software. We compare our results to what happened during the same period, to illustrate the efficacy of the open-source tools and techniques employed. We argue open-source data and software may facilitate rapid analysis of public data - a much-needed ability in human service intervention development under increasingly constrained resources - but find public data are limited by the information they reliably capture, limiting their utility by a non-trivial margin of error. The manuscript concludes by considering lessons for human service organizations with limited analytical resources and a vested interest in low-resourced communities.
title Open Source Software and Data for Human Service Development: A Case Study on Predicting Housing Instability
topic Computers and Society
url https://arxiv.org/abs/2512.12919