TY - JOUR
T1 - Nowcasting for hunger relief : a study of promise and perils
AU - Wobcke, Wayne
AU - Compton, Caroline
AU - Johns, Fleur
AU - Lamchek, Jayson
AU - Mariyah, Siti
PY - 2023
Y1 - 2023
N2 - Pitched as an aid to better development decision-making, the website HungerMap LIVE presents composite data on, and machine-learning derived predictions of, food insecurity in 90 countries. Of its current version, this article asks the following questions: What work is HungerMap LIVE called upon to do in ICT for development (ICT4D) practice? How well is it set up to do that work? Combining technical (both computer science and statistical) and social analysis, this article employs a close reading method drawn from humanities and legal research not usually directed at digital platforms or websites in combination with interview-based techniques. By this means, it scrutinizes HungerMap LIVE’s potential to guide or mislead users and canvasses some elaborations that could enhance its usability. It argues that interdisciplinary research of this kind can counter both the historical and technological determinism troubling the ICT4D field and better position decision-makers to employ machine learning in history- and context-attentive ways.
AB - Pitched as an aid to better development decision-making, the website HungerMap LIVE presents composite data on, and machine-learning derived predictions of, food insecurity in 90 countries. Of its current version, this article asks the following questions: What work is HungerMap LIVE called upon to do in ICT for development (ICT4D) practice? How well is it set up to do that work? Combining technical (both computer science and statistical) and social analysis, this article employs a close reading method drawn from humanities and legal research not usually directed at digital platforms or websites in combination with interview-based techniques. By this means, it scrutinizes HungerMap LIVE’s potential to guide or mislead users and canvasses some elaborations that could enhance its usability. It argues that interdisciplinary research of this kind can counter both the historical and technological determinism troubling the ICT4D field and better position decision-makers to employ machine learning in history- and context-attentive ways.
UR - https://hdl.handle.net/1959.7/uws:67721
U2 - 10.1080/02681102.2022.2092438
DO - 10.1080/02681102.2022.2092438
M3 - Article
SN - 0268-1102
VL - 29
SP - 27
EP - 47
JO - Information Technology for Development
JF - Information Technology for Development
IS - 1
ER -