Why do some countries have more disaster-resilient housing than others, even at similar income levels? This paper addresses this question using a novel dataset on housing robustness for 150 countries and proposes a "two-stage housing quality ladder" framework. The analysis reveals that the constraints on housing improvement fundamentally differ across development stages. In the first stage—eliminating fragile housing—household poverty is the binding constraint, showing strong negative associations with housing quality and non-linear effects that diminish at extreme poverty levels. Progress depends primarily on poverty alleviation and basic governance capacity. In the second stage—achieving robust, engineered construction—household poverty becomes statistically insignificant. Instead, national income, construction-sector institutions (building codes, permit systems, inspections), and overall institutional quality emerge as the critical determinants. The paper further demonstrates that countries learn from disaster experience, but this learning is hazard-specific and mediated by governance quality. Earthquake experience consistently drives improvements in housing resilience, particularly in well-governed countries, while storm and flood experiences show weaker direct effects but significant interactions with poverty levels. These findings carry important policy implications: disaster risk reduction investments should emphasize poverty alleviation and basic governance in low-income countries eliminating fragile housing, while middle- and high-income countries should prioritize construction-sector regulatory capacity and code enforcement systems to achieve robust engineering standards. Earthquake-prone countries benefit particularly from institutional strengthening that enables sustained learning from repeated seismic events.
| Repository name | URI |
|---|---|
| Reproducible Research Repository (World Bank) | https://reproducibility.worldbank.org |
Paper exhibits were reproduced on a computer with the following specifications:
• OS: Windows 11 Enterprise, version 25H2
• Processor: Intel(R) Core(TM) Ultra 7 165U (2.10 GHz)
• Memory available: 31.5 GB
Runtime: 20 minutes.
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| Author | Affiliation | |
|---|---|---|
| Yasuhiro Kawasoe | World Bank | ykawasoe@worldbank.org |
2026-02-10
| Location | Code |
|---|---|
| World | WLD |
The materials in the reproducibility packages are distributed as they were prepared by the staff of the International Bank for Reconstruction and Development/The World Bank. The findings, interpretations, and conclusions expressed in this event do not necessarily reflect the views of the World Bank, the Executive Directors of the World Bank, or the governments they represent. The World Bank does not guarantee the accuracy of the materials included in the reproducibility package.
| Name | URI |
|---|---|
| Modified BSD3 | https://opensource.org/license/bsd-3-clause/ |
| Name | Affiliation | |
|---|---|---|
| Yasuhiro Kawasoe | World Bank | ykawasoe@worldbank.org |
| Reproducibility WBG | World Bank | reproducibility@worldbank.org |
| Name | Abbreviation | Affiliation | Role |
|---|---|---|---|
| Reproducibility WBG | DECDI | World Bank - Development Impact Department | Verification and preparation of metadata |
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