Comment by Tasha Fairfield

Professor at the European University Institute working on Bayesian methods and uncertainty communication
Bayesian probability provides a natural and intuitive framework for characterising and communicating uncertainty. Bayesian analysis simply applies the laws of probability to evaluate which hypothesis is more plausible in light of whatever relevant information we have, however limited. Inference takes the form of posterior odds, which express how much confidence we have in the leading hypothesis relative to rivals given the evidence in hand, or equivalently, how much uncertainty surrounds our findings—which can always change when we learn new information. Examples from the pandemic—the debate over covid origins and expert guidance on public health measures—will be used to (i) illustrate how Bayesian inference works, (ii) highlight shortcomings in expert reasoning, and (iii) call attention to the potential pitfalls of overstating confidence in a given hypothesis.
Disputed (Jan 14, 2026)
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Disputed The quote is real and appears verbatim at the supplied EUI event URL on the page for “Characterising and communicating uncertainty” dated January 14, 2026. However, the page presents the text as the abstract of a talk by Prof. Tasha Fairfield (“this session features a talk by the SPS Professor Tasha Fairfield”) and separately lists her as the speaker, so the stored attribution to European University Institute is not the best canonical author. · YouCongress gpt-5.4-2026-03-05 · 1h ago
replying to Tasha Fairfield