While development literature has come a long way in conceptualizing and measuring poverty multidimensionally, policy interventions to address it remain trapped in fragmented sector-specific approaches. One of the main challenges in implementing integrated policy responses to multidimensional poverty reduction is understanding how the different dimensions are interlinked and how they jointly evolve over time. For example, disentangling how a person’s health, education, and standards of living all interact in a dynamic sense. Motivated by economic complexity methods and applications, we use network science to propose two new measures to understand the interconnected structure of multidimensional poverty: the Poverty Space (a network that visualizes the interactions among different indicators of poverty) and Poverty Centrality (a measure of the relative importance of each indicator within this network). Applying these measures to 67 developing countries using data from the OPHI/UNDP Global Multidimensional Poverty Index, we find that the structure of multidimensional poverty networks is similar across countries and stable over time. We also find that indicators that are more central in the Poverty Space witness a more significant reduction in the censored headcount ratio over time, compared to peripheral indicators. We then use these results to demonstrate how the Poverty Space can be applied in policy: using the forward-looking Policy Priority Inference framework to help guide policy choices. Overall, our research points to the relevance of using network science methods to help identify key “nodes” in the structure of multidimensional poverty where applied pressure (targeted interventions) could lead to a greater effect on the system as a whole.
Repository name | URI |
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Reproducible Research Repository (World Bank) | https://reproducibility.worldbank.org |
Paper exhibits were reproduced in two computers with the following specifications:
Computer 1:
• OS: Mac OS 15.0.1
• Processor: Apple M1 Pro
• Memory available: 32 GB
• Software version: Python version 3.13.
Computer 2:
• OS: Windows 10 Enterprise
• Processor: Intel(R) Xeon(R) Gold 6226R CPU @ 2.90GHz, 2900 Mhz, 16 Core(s), 16 Logical Processor(s)
• Memory available: 87.7 GB
• Software version: Python version 3.9.13.
All the results were identical and reproducible in the two computers with exception of Figure 3, which was only reproducible in a MacOS environment.
~60 minutes run time
To reproduce the analysis provided in this package, new users need to do the following:
Recover the Environment
To ensure the correct environment, follow these steps:
conda create --name rep-package
conda activate rep-package
pip install -r requirements.txt
Run the complexity-mp-analysis.ipynb
Jupyter Notebook.
*Note on OS Compatibility
output_replicators
with the results from both operating systems for transparency, and the reproducibility report included in the package contains more detailed information.All data sources are publicly available but not all are included in the reproducibility package.
Author | Affiliation | |
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Viktor Stojkoski | University Ss. Cyril and Methodius in Skopje, North Macedonia, and Center for Collective Learning, ANITI, IRIT, Université de Toulouse & CIAS Corvinus University of Budapest | viksabot@gmail.com |
Luis F. Lopez-Calva | World Bank | lflopezcalva@worldbank.org |
Kimberly Bolch | World Bank | kbolch@worldbank.org |
Almudena Fernandez | United Nations Development Programme | almudena.fernandez@undp.org |
2024-08
Location | Code |
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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 |
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Modified BSD3 | https://opensource.org/license/bsd-3-clause/ |
Name | Affiliation | |
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Viktor Stojkoski | University Ss. Cyril and Methodius in Skopje, North Macedonia, and Center for Collective Learning, ANITI, IRIT, Université de Toulouse & CIAS Corvinus University of Budapest | viksabot@gmail.com |
Reproducibility WBG | World Bank | reproducibility@worldbank.org |
Name | Abbreviation | Affiliation | Role |
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Reproducibility WBG | DIME | World Bank - Development Impact Department | Verification and preparation of metadata |
2024-10-22
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