Predicting hurricane evacuation decisions with interpretable machine learning methods

The present study proposed a novel interpretable machine learning approach to predict household-level evacuation decisions by leveraging easily accessible demographic and resource-related predictors, compared to existing models that mainly rely on psychological factors. An enhanced logistic regression model (that is, an interpretable machine learning approach) was developed for accurate predictions by automatically accounting for nonlinearities and interactions (that is, univariate and bivariate threshold effects). Specifically, nonlinearity and interaction detection were enabled by low-depth decision trees, which offer transparent model structure and robustness.

A survey dataset collected in the aftermath of Hurricanes Katrina and Rita, two of the most intense tropical storms of the last two decades, was employed to test the new methodology. The findings show that, when predicting the households’ evacuation decisions, the enhanced logistic regression model outperformed previous linear models in terms of both model fit and predictive capability. This outcome suggests that our proposed methodology could provide a new tool and framework for emergency management authorities to improve the prediction of evacuation traffic demands in a timely and accurate manner.

Source: International Journal of Disaster Risk Science

Author(s): Yuran SunShih-Kai HuangXilei Zhao

Are you sure you want to delete this "resource"?
This item will be deleted immediately. You cannot undo this action.

Related Resources

Research
23 Dec 2022
This research is carried out by  PK Latha1, S Ranjith1, Vidhya Venugopal1  with funding support from the Global Disaster Preparedness Center. Dehydration and volume loss from climate-related excessive heat exposure can cause rapid mortality from ch...
Tags: Research
Report, Research
15 Dec 2014
The title of this Report, Mind, Society, and Behavior,captures the idea that paying attention to how humans think (the processes of mind) and how history and context shape thinking (the influence of society) can improve the design and implementati...
Tags: Report, Research, Community Engagement and Accountability
Research
17 Aug 2022
Cities and local governments play important roles in strengthening the belonging of migrants and refugees to the city, especially in areas that are the cornerstones of social cohesion, such as education, employment, and learning the language of the h...
Tags: Research
Scroll to Top