TY - GEN
T1 - Interpreting wealth distribution via poverty map inference using multimodal data
AU - Espín-Noboa, Lisette
AU - Kertész, János
AU - Karsai, Márton
N1 - Publisher Copyright:
© 2023 Owner/Author.
PY - 2023/4/30
Y1 - 2023/4/30
N2 - Poverty maps are essential tools for governments and NGOs to track socioeconomic changes and adequately allocate infrastructure and services in places in need. Sensor and online crowd-sourced data combined with machine learning methods have provided a recent breakthrough in poverty map inference. However, these methods do not capture local wealth fluctuations, and are not optimized to produce accountable results that guarantee accurate predictions to all sub-populations. Here, we propose a pipeline of machine learning models to infer the mean and standard deviation of wealth across multiple geographically clustered populated places, and illustrate their performance in Sierra Leone and Uganda. These models leverage seven independent and freely available feature sources based on satellite images, and metadata collected via online crowd-sourcing and social media. Our models show that combined metadata features are the best predictors of wealth in rural areas, outperforming image-based models, which are the best for predicting the highest wealth quintiles. Our results recover the local mean and variation of wealth, and correctly capture the positive yet non-monotonous correlation between them. We further demonstrate the capabilities and limitations of model transfer across countries and the effects of data recency and other biases. Our methodology provides open tools to build towards more transparent and interpretable models to help governments and NGOs to make informed decisions based on data availability, urbanization level, and poverty thresholds.
AB - Poverty maps are essential tools for governments and NGOs to track socioeconomic changes and adequately allocate infrastructure and services in places in need. Sensor and online crowd-sourced data combined with machine learning methods have provided a recent breakthrough in poverty map inference. However, these methods do not capture local wealth fluctuations, and are not optimized to produce accountable results that guarantee accurate predictions to all sub-populations. Here, we propose a pipeline of machine learning models to infer the mean and standard deviation of wealth across multiple geographically clustered populated places, and illustrate their performance in Sierra Leone and Uganda. These models leverage seven independent and freely available feature sources based on satellite images, and metadata collected via online crowd-sourcing and social media. Our models show that combined metadata features are the best predictors of wealth in rural areas, outperforming image-based models, which are the best for predicting the highest wealth quintiles. Our results recover the local mean and variation of wealth, and correctly capture the positive yet non-monotonous correlation between them. We further demonstrate the capabilities and limitations of model transfer across countries and the effects of data recency and other biases. Our methodology provides open tools to build towards more transparent and interpretable models to help governments and NGOs to make informed decisions based on data availability, urbanization level, and poverty thresholds.
KW - deep learning
KW - high-resolution spatial inference
KW - machine learning
KW - online crowd-sourced data
KW - poverty maps
KW - satellite images
UR - https://www.scopus.com/pages/publications/85159369351
U2 - 10.1145/3543507.3583862
DO - 10.1145/3543507.3583862
M3 - Conference contribution
AN - SCOPUS:85159369351
SN - 9781450394161
T3 - Proceedings of the ACM Web Conference 2023
SP - 4029
EP - 4040
BT - ACM Web Conference 2023 - Proceedings of the World Wide Web Conference, WWW 2023
PB - Association for Computing Machinery
T2 - 32nd ACM World Wide Web Conference, WWW 2023
Y2 - 30 April 2023 through 4 May 2023
ER -