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Scalable Multimodal Approaches

Identifying Vulnerable Populations in

The Republic of the Congo

This project uses artificial intelligence technologies to more accurately and rapidly identify areas of extreme poverty in the Republic of the Congo, informing humanitarian responses to the country’s surging food insecurity in the wake of COVID-19. The research incorporates daytime satellite imagery, nighttime luminosity, geographic features, and Twitter data to create algorithms that estimate the wealth and livelihood of geographic regions.


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FOOD INSECURITY IN CONGO PRE-COVID

FOOD INSECURITY IN CONGO DURING COVID

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FOOD

SECURITY

90%

FOOD

INSECURITY

10%

30%.png

FOOD

INSECURITY

30%

FOOD

SECURITY

70%

Artificial intelligence (AI) and machine learning (ML) techniques can generate unbiased geographical data and identify areas of extreme poverty, which policymakers can adopt to prioritize development aid allocations. This innovative method can help develop scalable algorithms to inform humanitarian responses to Africa's food crisis. In the Republic of the Congo (RoC), one out of two people live below poverty, and the pre-COVID level of food insecurity of 10% has surged to 30% during the pandemic. Thus far, governments have responded to this crisis by doubling social protection programs. However, the current targeting methods do not provide enough information on eligible communities and are too slow to mitigate transitory shocks. This issue highlights the need for a systemic, fine-grained, and rapid geographic targeting technique. 
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Research

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Dr. Jung's latest research project aims to develop a multimodal approach that combines daytime satellite imagery and social media to estimate the wealth and livelihood of regions and shape aid distribution.

              PARTNERS             ....................................................

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Recipient of Microsoft
AI for Humanitarian Action Project Initiatives
$25,000 Azure Grant 

              PARTNERS             ....................................................

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Recipient of the Global Health Institute's Global Health Seed Grant

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PARTNERS
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              PARTNERS             ....................................................

The research team established an MOU/ data sharing agreement with the Institut Geographique National (IGN) in the Republic of the Congo. The government agency is providing  geospatial data on Brazzaville and Pointe-Noire, including administrative boundaries, road network, and waterways.

         UPDATE             ....................................................

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Learn More

Dr. Jung’s research is expected to have high global impact by offering enhanced data for key development actors to reach people and regions with extreme poverty. This project's outputs, such as high-resolution poverty maps, will be shared with the WFP and the Ministry of Social Affairs to scale up social protection programs. These maps can be updated as new data becomes available to decision-makers in near real time. This work could potentially address misinformation and current criticisms of AI that miss out on the bottom billion, thereby addressing diversity, equity, and inclusion.

            RESEARCH TEAM       .................................................................​​

The team consists of computer/data scientists

and social scientists:

  • Woojin Jung (PI) - Rutgers, School of Social Work

  • Quentin Stoeffler - University of Bordeaux, Economics

  • Saeed Ghadimi - University of Waterloo, AI Institute

  • Jordan Steiner - Rutgers, School of Social Work

  • Maryam Hosseini - New York University, Engineering

  • Rofaida Benotsmane - Istanbul Technical Univ., Economics

  • Charles Chear - Rutgers, School of Social Work

            RESEARCH TEAM       .................................................................​​

  • Eunice Park - Rutgers, School of Social Work

  • Jacqueline Ponzio - Rutgers, School of Social Work

  • Harish Udaya Kumar - Rutgers, Computer Science

  • Varun Tej Nookala - Rutgers, Data Sciences

  • Devarsh Shah - Rutgers, Computer Science

  • Nicy Bazebizonza - Institut Geographique Nationale

      3 STAGES        ..........................................................

  1. Assess the current machine learning model

  2. Develop new algorithms with a wider application

  3. Share this new field-tested and evaluated approach with policymakers

Research Duration
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July 2021 - June 2022

The study is slated to conclude in June 2022 with the dissemination of findings to policymakers.

The research team represents diversity across disciplines, countries/continents (Africa, Asia, US), languages, and cultures. Our study can contribute to broadening the reach of social protection programs by identifying vulnerable and poor populations in the Republic of the Congo and other countries where there is very limited, georeferenced wealth data.

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Research team composition.png

This current project in the Republic of the Congo was recently featured in 'Focus on Faculty' on Rutgers University's Office of Research website and social media outlets:                 .

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