Scientific Data (Jul 2023)

From mobile crowdsourcing to crowd-trusted food price in Nigeria: statistical pre-processing and post-sampling

  • Giuseppe Arbia,
  • Gloria Solano-Hermosilla,
  • Vincenzo Nardelli,
  • Fabio Micale,
  • Giampiero Genovese,
  • Ilaria Lucrezia Amerise,
  • Julius Adewopo

DOI
https://doi.org/10.1038/s41597-023-02211-1
Journal volume & issue
Vol. 10, no. 1
pp. 1 – 12

Abstract

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Abstract Timely and reliable monitoring of food market prices at high spatial and temporal resolution is essential to understanding market and food security developments and supporting timely policy and decision-making. Mostly, decisions rely on price expectations, which are updated with new information releases. Therefore, increasing the availability and timeliness of price information has become a national and international priority. We present two new datasets in which mobile app-based crowdsourced daily price observations, voluntarily submitted by self-selected participants, are validated in real-time within spatio-temporal markets (pre-processed data). Then, they are reweighted weekly using their geo-location to resemble a formal sample design and allow for more reliable statistical inference (post-sampled data). Using real-time data collected in Nigeria, we assess the accuracy and propose that our reweighted estimates are more accurate with respect to the unweighted version. Results have important implications for governments, food chain actors, researchers and other organisations.