Algorithmic decision-making: an arms-race between entropy, programmers and referees
Nesta's Juan Mateos-Garcia proposes that "entropic forces" make algorithmic decision-making tools worse over time, requiring that they be continuously maintained and improved (this is also a key idea from Cathy O'Neil's Weapons of Math Destruction: a machine-learning system is only honest if someone is continuously matching its predictions to reality and refining its model based on the mistakes it makes).
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Thursday, June 1, 2017
Algorithmic decision-making: an arms-race between entropy, programmers and referees
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