Journal article

Machine learning augmentation reduces prediction error in collective forecasting: development and validation across prediction markets with application to COVID events

Alexander Gruen, Karl R Mattingly, Ellen Morwitch, Frederik Bossaerts, Manning Clifford, Chad Nash, John PA Ioannidis, Anne-Louise Ponsonby

EBioMedicine | Elsevier | Published : 2023

Abstract

Background: The recent COVID-19 pandemic highlighted the challenges for traditional forecasting. Prediction markets are a promising way to generate collective forecasts and could potentially be enhanced if high-quality crowdsourced inputs were identified and preferentially weighted for likely accuracy in real-time with machine learning. Methods: We aim to leverage human prediction markets with real-time machine weighting of likely higher accuracy trades to improve performance. The crowd sourced Almanis prediction market longitudinal platform (n = 1822) and Next Generation Social Science (NGS2) platform (n = 103) were utilised. Findings: A 43-feature model predicted accurate forecasters, thos..

View full abstract

University of Melbourne Researchers

Grants

Awarded by AusIndustry R and D tax incentive program from the Department of In-dustry, Science, Energy and Resources, Australia


Funding Acknowledgements

Funding This work was supported by an AusIndustry R and D tax incentive program from the Department of In-dustry, Science, Energy and Resources, Australia, to SlowVoice Pty Ltd. (IR 2101990) and Fellowship (GNT 1110200) and Investigator grant (GNT 1197234) to A-L Ponsonby by the National Health and Medical Research Council of Australia.