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Child Care Provider Survival Analysis

Author

Listed:
  • Phillip Sherlock
  • Herman T. Knopf
  • Robert Chapman
  • Maya Schreiber
  • Courtney K. Blackwell

Abstract

The aggregate ability of child care providers to meet local demand for child care is linked to employment rates in many sectors of the economy. Amid growing concern regarding child care provider sustainability due to the COVID-19 pandemic, state and local governments have received large amounts of new funding to better support provider stability. In response to this new funding aimed at bolstering the child care market in Florida, this study was devised as an exploratory investigation into features of child care providers that lead to business longevity. In this study we used optimal survival trees, a machine learning technique designed to better understand which providers are expected to remain operational for longer periods of time, supporting stabilization of the child care market. This tree-based survival analysis detects and describes complex interactions between provider characteristics that lead to differences in expected business survival rates. Results show that small providers who are religiously affiliated, and all providers who are serving children in Florida's universal Prekindergarten program and/or children using child care subsidy, are likely to have the longest expected survival rates.

Suggested Citation

  • Phillip Sherlock & Herman T. Knopf & Robert Chapman & Maya Schreiber & Courtney K. Blackwell, 2022. "Child Care Provider Survival Analysis," Papers 2208.02154, arXiv.org.
  • Handle: RePEc:arx:papers:2208.02154
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    File URL: http://arxiv.org/pdf/2208.02154
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