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Anticipating trajectories of exponential growth.

Florian HutzlerFabio RichlanMichael Christian LeitnerSarah SchusterMario BraunStefan Hawelka
Published in: Royal Society open science (2021)
Humans grossly underestimate exponential growth, but are at the same time overconfident in their (poor) judgement. The so-called 'exponential growth bias' is of new relevance in the context of COVID-19, because it explains why humans have fundamental difficulties to grasp the magnitude of a spreading epidemic. Here, we addressed the question, whether logarithmic scaling and contextual framing of epidemiological data affect the anticipation of exponential growth. Our findings show that underestimations were most pronounced when growth curves were linearly scaled and framed in the context of a more advanced epidemic progression. For logarithmic scaling, estimates were much more accurate, on target for growth rates around 31%, and not affected by contextual framing. We conclude that the logarithmic depiction is conducive for detecting exponential growth during an early phase as well as resurgences of exponential growth.
Keyphrases
  • coronavirus disease
  • sars cov
  • depressive symptoms
  • big data
  • artificial intelligence