Walkability measures to predict the likelihood of walking in a place: A classification and regression tree analysis

Health Place. 2021 Nov:72:102700. doi: 10.1016/j.healthplace.2021.102700. Epub 2021 Oct 23.

Abstract

Walkability is a popular and ubiquitous term at the intersection of urban planning and public health. As the number of potential walkability measures grows in the literature, there is a need to compare their relative importance for specific research objectives. This study demonstrates a classification and regression tree (CART) model to compare five familiar measures of walkability from the literature for their relative ability to predict whether or not walking occurs in a dataset of objectively measured locations. When analyzed together, the measures had moderate-to-high accuracy (87.8% agreement: 65.6% of true walking GPS-measured points classified as walking and 93.4% of non-walking points as non-walking). On its own, the most well-known composite measure, Walk Score, performed only slightly better than measures of the built environment composed of a single variable (transit ridership, employment density, and residential density).Thus there may be contexts where transparent and longitudinally available measures of urban form are worth a marginal tradeoff in prediction accuracy. This comparison of walkability measures using CART highlights the importance for public health and urban design researchers to think carefully about how and why particular walkability measures are used.

Keywords: Decision tree; Health; Physical activity; Walkability.

Publication types

  • Research Support, N.I.H., Extramural

MeSH terms

  • Built Environment
  • Environment Design*
  • Humans
  • Regression Analysis
  • Residence Characteristics*
  • Walking