“…This creates a real challenge in time-sensitive settings, where obtaining accurate predictions cannot wait until decision makers calibrate their expectations about the accuracy of their forecasters. This might include settings where forecasting problems have prohibitively long time horizons, such as long-term economic trends (Himmelstein, Budescu & Han, 2022); forecasts about life and death issues such as global health or climate crises (Ho et al, 2015(Ho et al, , 2019Taylor & Taylor, 2023); prognosis and prediction of disease treatment outcomes (Ioannidis, 2009); assessing the performance of professional athletes to optimize roster construction (Lee et al, 2018;Lewis, 2004;Miller & Sanjurjo, 2018); identification of the importance and replicability of scientific research (Aczel et al, 2021;Camerer et al, 2016); or even events that may never have a clear resolution (Karger et al, 2021(Karger et al, , 2022. Analyzing traits known to be related to forecasting skills (Colson & Cooke, 2018;Ho, 2020;Mellers, Stone, Atanasov, et al, 2015) or behaviors that occur during forecasting elicitation (Atanasov et al, 2020) can provide a head start, but these methods ultimately pale in comparison to having information about a forecaster's past accuracy (Himmelstein et al, 2021).…”