•Stanford’s machine learning model can predict poverty
•It uses satellite imagery to gather data and runs it through the algorithm
•Night time images are cross checked with day time images to predict the economic status of the region
•It’s open source, code is available on GitHub for both R and python
Eliminating poverty is the number one goal of most countries around the world. However, the process of going around rural areas and manually tracking census data is time consuming, labor intensive and expensive.
Considering that, a group of researchers at Stanford have pioneered an approach that combines machine learning with satellite images to make predicting poverty quicker, easier and less expensive.
How does the algorithm work?
Using this machine learning algorithm, the model is able to predict per capita consumption expenditure of a particular location when provided with it’s satellite images. The algorithm runs through millions of images of rural regions throughout the world. It then compares the presence of light in a region during the day and at night to predict it’s economic activity. This approach is called transfer learning.
Using the images captured during the night, the algorithm cross references it with the day time images to gauge the infrastructure there. In general, a brightly lit area means it is powered by electricity and must be better off than the alternative.
Before making it’s predictions, the algorithm has been made to cross check it’s results with actual survey data in order to improve it’s accuracy.
So far, this study was performed for regions in 5 countries – Nigeria, Uganda, Tanzania, Rwanda and Malawi. Check out a small video on this study below:
Our take on this
Anything that helps eliminate poverty is good in our books and when it comes to machine learning doing the work, even better. Stanford claims that it’s model predicts poverty almost as well as the manually collected data so that makes it a feasible option for the survey administrators.
It’s also an open-sourced project and they have made their code available on GitHub here. It’s available both in R and python so anyone with an interest in the subject can try it on their own systems.
Apart from Stanford, researchers at the University of Buffalo are also using machine learning and satellite images to predict poverty. Their approach differs from Stanford’s as they have added cell phone data to their model. The Pentagon is also offering $100,000 to anyone who can read the data from satellite images in the same way that Stanford’s model does.