2020
DOI: 10.1371/journal.pone.0231416
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Probabilistic forecasting of replication studies

Abstract: Throughout the last decade, the so-called replication crisis has stimulated many researchers to conduct large-scale replication projects. With data from four of these projects, we computed probabilistic forecasts of the replication outcomes, which we then evaluated regarding discrimination, calibration and sharpness. A novel model, which can take into account both inflation and heterogeneity of effects, was used and predicted the effect estimate of the replication study with good performance in two of the four… Show more

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Cited by 31 publications
(29 citation statements)
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“…The data and results presented in this paper can be used for future forecasting projects that are either planned or in progress [ 14 ], by informing experimental design and forecasting aggregation. The results can also be used to evaluate the predictive performance of prediction markets against other methods [ 33 , 34 , 40 ]. The pooled dataset presents opportunities for other researchers investigate replicability of scientific research, human forecasts and their intersection, as well as providing a benchmark for any further replication-based markets.…”
Section: Discussionmentioning
confidence: 99%
“…The data and results presented in this paper can be used for future forecasting projects that are either planned or in progress [ 14 ], by informing experimental design and forecasting aggregation. The results can also be used to evaluate the predictive performance of prediction markets against other methods [ 33 , 34 , 40 ]. The pooled dataset presents opportunities for other researchers investigate replicability of scientific research, human forecasts and their intersection, as well as providing a benchmark for any further replication-based markets.…”
Section: Discussionmentioning
confidence: 99%
“…If these findings are themselves replicable, then machine learning algorithms could provide a highscalable early assessment of replicability and credibility to inform evaluation, resource allocation, and identification of gaps and strengths in the empirical evidence for theoretical models and findings. A third study used a different type of forecasting approach using the original studies' information and the replication studies' sample size only (Pawel & Held, 2020). For the comparable samples, the forecasts from the tested statistical methods performed as well as or worse than the prediction markets.…”
Section: Predicting Replicabilitymentioning
confidence: 99%
“…Note that the amount of shrinkage of the prediction depends on the signal‐to‐noise ratio, which can be summarised by the p ‐value of the original study. The adjustment barely shrinks large effect estimates from very convincing original studies but applies more shrinkage to less convincing ones 6 . For our simulated data, the adjustment reduces the mean squared prediction error from 1.87 to 1.56 (17%).…”
Section: Publication Biasmentioning
confidence: 80%