sierra leone
GraphCSVAE: Graph Categorical Structured Variational Autoencoder for Spatiotemporal Auditing of Physical Vulnerability Towards Sustainable Post-Disaster Risk Reduction
Dimasaka, Joshua, Geiß, Christian, Muir-Wood, Robert, So, Emily
In the aftermath of disasters, many institutions worldwide face challenges in continually monitoring changes in disaster risk, limiting the ability of key decision-makers to assess progress towards the UN Sendai Framework for Disaster Risk Reduction 2015-2030. While numerous efforts have substantially advanced the large-scale modeling of hazard and exposure through Earth observation and data-driven methods, progress remains limited in modeling another equally important yet challenging element of the risk equation: physical vulnerability. To address this gap, we introduce Graph Categorical Structured Variational Autoencoder (GraphCSVAE), a novel probabilistic data-driven framework for modeling physical vulnerability by integrating deep learning, graph representation, and categorical probabilistic inference, using time-series satellite-derived datasets and prior expert belief systems. We introduce a weakly supervised first-order transition matrix that reflects the changes in the spatiotemporal distribution of physical vulnerability in two disaster-stricken and socioeconomically disadvantaged areas: (1) the cyclone-impacted coastal Khurushkul community in Bangladesh and (2) the mudslide-affected city of Freetown in Sierra Leone. Our work reveals post-disaster regional dynamics in physical vulnerability, offering valuable insights into localized spatiotemporal auditing and sustainable strategies for post-disaster risk reduction.
- Europe > United Kingdom > England > Cambridgeshire > Cambridge (0.28)
- Africa > Sierra Leone > Western Area > Western Area Urban District > Freetown (0.25)
- Asia > Japan > Honshū > Tōhoku > Miyagi Prefecture > Sendai (0.25)
- (6 more...)
GraphVSSM: Graph Variational State-Space Model for Probabilistic Spatiotemporal Inference of Dynamic Exposure and Vulnerability for Regional Disaster Resilience Assessment
Dimasaka, Joshua, Geiß, Christian, So, Emily
Regional disaster resilience quantifies the changing nature of physical risks to inform policy instruments ranging from local immediate recovery to international sustainable development. While many existing state-of-practice methods have greatly advanced the dynamic mapping of exposure and hazard, our understanding of large-scale physical vulnerability has remained static, costly, limited, region-specific, coarse-grained, overly aggregated, and inadequately calibrated. With the significant growth in the availability of time-series satellite imagery and derived products for exposure and hazard, we focus our work on the equally important yet challenging element of the risk equation: physical vulnerability. We leverage machine learning methods that flexibly capture spatial contextual relationships, limited temporal observations, and uncertainty in a unified probabilistic spatiotemporal inference framework. We therefore introduce Graph Variational State-Space Model (GraphVSSM), a novel modular spatiotemporal approach that uniquely integrates graph deep learning, state-space modeling, and variational inference using time-series data and prior expert belief systems in a weakly supervised or coarse-to-fine-grained manner. We present three major results: a city-wide demonstration in Quezon City, Philippines; an investigation of sudden changes in the cyclone-impacted coastal Khurushkul community (Bangladesh) and mudslide-affected Freetown (Sierra Leone); and an open geospatial dataset, METEOR 2.5D, that spatiotemporally enhances the existing global static dataset for UN Least Developed Countries (2020). Beyond advancing regional disaster resilience assessment and improving our understanding global disaster risk reduction progress, our method also offers a probabilistic deep learning approach, contributing to broader urban studies that require compositional data analysis in weak supervision.
- Europe > United Kingdom > England > Cambridgeshire > Cambridge (0.28)
- Asia > Philippines > Luzon > National Capital Region > City of Quezon (0.25)
- Africa > Sierra Leone > Western Area > Western Area Urban District > Freetown (0.25)
- (10 more...)
- Information Technology > Artificial Intelligence > Representation & Reasoning (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Neural Networks > Deep Learning (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Learning Graphical Models > Undirected Networks > Markov Models (0.34)
Could AI Leapfrog the Web? Evidence from Teachers in Sierra Leone
Björkegren, Daniel, Choi, Jun Ho, Budihal, Divya, Sobhani, Dominic, Garrod, Oliver, Atherton, Paul
Access to digital information is a driver of economic development. But although 85% of sub-Saharan Africa's population is covered by mobile broadband signal, only 37% use the internet, and those who do seldom use the web. We investigate whether AI can bridge this gap by analyzing how 469 teachers use an AI chatbot in Sierra Leone. The chatbot, accessible via a common messaging app, is compared against traditional web search. Teachers use AI more frequently than web search for teaching assistance. Data cost is the most frequently cited reason for low internet usage across Africa. The average web search result consumes 3,107 times more data than an AI response, making AI 87% less expensive than web search. Additionally, only 2% of results for corresponding web searches contain content from Sierra Leone. In blinded evaluations, an independent sample of teachers rate AI responses as more relevant, helpful, and correct than web search results. These findings suggest that AI-driven solutions can cost-effectively bridge information gaps in low-connectivity regions.
- Africa > Sub-Saharan Africa (0.24)
- Africa > Uganda (0.04)
- Africa > South Africa (0.04)
- (14 more...)
- Research Report > New Finding (1.00)
- Research Report > Experimental Study (1.00)
- Questionnaire & Opinion Survey (1.00)
- Instructional Material (1.00)
- Information Technology (1.00)
- Health & Medicine (1.00)
- Education > Curriculum (0.93)
- (2 more...)
- Information Technology > Information Management > Search (1.00)
- Information Technology > Artificial Intelligence > Natural Language > Large Language Model (1.00)
- Information Technology > Artificial Intelligence > Natural Language > Chatbot (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Neural Networks > Deep Learning (0.69)
A Comparative Analysis of Wealth Index Predictions in Africa between three Multi-Source Inference Models
Karsai, Márton, Kertész, János, Espín-Noboa, Lisette
Poverty map inference is a critical area of research, with growing interest in both traditional and modern techniques, ranging from regression models to convolutional neural networks applied to tabular data, images, and networks. Despite extensive focus on the validation of training phases, the scrutiny of final predictions remains limited. Here, we compare the Relative Wealth Index (RWI) inferred by Chi et al. (2022) with the International Wealth Index (IWI) inferred by Lee and Braithwaite (2022) and Esp\'in-Noboa et al. (2023) across six Sub-Saharan African countries. Our analysis focuses on identifying trends and discrepancies in wealth predictions over time. Our results show that the predictions by Chi et al. and Esp\'in-Noboa et al. align with general GDP trends, with differences expected due to the distinct time-frames of the training sets. However, predictions by Lee and Braithwaite diverge significantly, indicating potential issues with the validity of the model. These discrepancies highlight the need for policymakers and stakeholders in Africa to rigorously audit models that predict wealth, especially those used for decision-making on the ground. These and other techniques require continuous verification and refinement to enhance their reliability and ensure that poverty alleviation strategies are well-founded.
- Africa > Uganda (0.16)
- Africa > South Africa (0.06)
- Africa > Rwanda (0.05)
- (7 more...)
- Banking & Finance (1.00)
- Government (0.66)
Incorporating Question Answering-Based Signals into Abstractive Summarization via Salient Span Selection
In this work, we propose a method for incorporating question-answering (QA) signals into a summarization model. Our method identifies salient noun phrases (NPs) in the input document by automatically generating wh-questions that are answered by the NPs and automatically determining whether those questions are answered in the gold summaries. This QA-based signal is incorporated into a two-stage summarization model which first marks salient NPs in the input document using a classification model, then conditionally generates a summary. Our experiments demonstrate that the models trained using QA-based supervision generate higher-quality summaries than baseline methods of identifying salient spans on benchmark summarization datasets. Further, we show that the content of the generated summaries can be controlled based on which NPs are marked in the input document. Finally, we propose a method of augmenting the training data so the gold summaries are more consistent with the marked input spans used during training and show how this results in models which learn to better exclude unmarked document content.
- North America > United States > Minnesota > Hennepin County > Minneapolis (0.14)
- Africa > Sierra Leone (0.05)
- North America > Jamaica (0.05)
- (14 more...)
- Health & Medicine (0.97)
- Government > Military (0.46)
- Government > Regional Government (0.46)
Decision-Aware Learning for Optimizing Health Supply Chains
Chung, Tsai-Hsuan, Rostami, Vahid, Bastani, Hamsa, Bastani, Osbert
We study the problem of allocating limited supply of medical resources in developing countries, in particular, Sierra Leone. We address this problem by combining machine learning (to predict demand) with optimization (to optimize allocations). A key challenge is the need to align the loss function used to train the machine learning model with the decision loss associated with the downstream optimization problem. Traditional solutions have limited flexibility in the model architecture and scale poorly to large datasets. We propose a decision-aware learning algorithm that uses a novel Taylor expansion of the optimal decision loss to derive the machine learning loss. Importantly, our approach only requires a simple re-weighting of the training data, ensuring it is both flexible and scalable, e.g., we incorporate it into a random forest trained using a multitask learning framework. We apply our framework to optimize the distribution of essential medicines in collaboration with policymakers in Sierra Leone; highly uncertain demand and limited budgets currently result in excessive unmet demand. Out-of-sample results demonstrate that our end-to-end approach can significantly reduce unmet demand across 1040 health facilities throughout Sierra Leone.
- Africa > Sierra Leone (0.67)
- North America > United States > Pennsylvania (0.05)
- Health & Medicine (1.00)
- Government (0.89)
David Moinina Sengeh: The sore problem of prosthetic limbs
Decades ago, a civil war in Sierra Leone left thousands as amputees. Researcher and current Education Minister David Moinina Sengeh set out to help them with a more comfortable socket for prostheses. David Moinina Sengeh is a biomechatronics engineer and the current Minister of Education and Chief Innovation Officer in his home country of Sierra Leone. He pioneered a new system for creating prosthetic sockets, which fit a prosthetic leg onto a patient's residual limb. Using multiple technologies, Sengeh created sockets that are far more comfortable than traditional ones, and can be produced cheaply and quickly.
MIT's new bionics center may usher in our cyborg future
A new MIT research center promises to accelerate our journey to a future in which bionics help people everywhere overcome the challenges of disabilities -- and even enhance human potential. The future is near: Bionics replace or restore the function of missing or damaged body parts with electronic devices -- examples include leg exoskeletons and mind-controlled prosthetic arms. These devices can be life-changing, but many are still unique and experimental, meaning the only people to benefit from them are a handful of study participants. The faster we can advance bionics research, the sooner they'll be available to everyone who needs them. "We must continually strive towards a technological future in which disability is no longer a common life experience," MIT professor Hugh Herr, himself a double amputee, told MIT News.
- Health & Medicine > Therapeutic Area (0.57)
- Health & Medicine > Health Care Technology (0.37)
This Education Minister Is A Renaissance Man (And He's Got A Music Video To Prove It)
Sierra Leone's minister of education and chief innovation officer David Moinina Sengeh is a man of many talents. He's using mobile phone technology to improve daily life, he invented a way to make a prosthetic limb with a computer-assisted technique and he's a singer and rapper and a clothing designer, too. Sierra Leone's minister of education and chief innovation officer David Moinina Sengeh is a man of many talents. He's using mobile phone technology to improve daily life, he invented a way to make a prosthetic limb with a computer-assisted technique and he's a singer and rapper and a clothing designer, too. David Moinina Sengeh is not your typical education minister.
- Government (1.00)
- Health & Medicine > Health Care Technology (0.98)
- Media > Music (0.92)
- (2 more...)
- Information Technology > Communications > Mobile (1.00)
- Information Technology > Artificial Intelligence (1.00)
AI: The complex solution to simplify health care
Health care languishes in data dissonance. A fundamental imbalance between collection and use persists across systems and geopolitical boundaries. Data collection has been an all-consuming effort with good intent but insufficient results in turning data into action. After a strong decade, the sentiment is that the data is inconsistent, messy, and untrustworthy. The most advanced health systems in the world remain confused by what they've amassed: reams of data without a clear path toward impact.
- Africa > Sierra Leone (0.05)
- North America > United States > New York (0.05)
- North America > United States > California (0.05)
- Africa > Mozambique (0.05)