We consider the design of forecasting competitions in which multiple forecasters make predictions about one or more independent events and compete for a single prize. We have two objectives: (1) to award the prize to the most accurate forecaster, and (2) to incentivize forecasters to report truthfully, so that forecasts are informative and forecasters need not spend any cognitive effort strategizing about reports. Proper scoring rules incentivize truthful reporting if all forecasters are paid according to their scores. However, incentives become distorted if only the best-scoring forecaster wins a prize, since forecasters can often increase their probability of having the highest score by reporting extreme beliefs. Even if forecasters do re...
Strictly proper scoring rules, including the Brier score and the logarithmic score, are standard met...
In a prediction contest participants compete for a prize by submitting guesses regarding an unknown ...
Forecasting methods are routinely employed to predict the outcome of competitive events (CEs) and to...
We initiate the study of incentive-compatible forecasting competitions in which multiple forecasters...
Proper scoring rules can be used to incentivize a forecaster to truthfully report her private belie...
Forecasting is modeled as a rank-order contest with privately informed players. Rankorder contests a...
This paper examines the prediction contests as a vehicle for aggregating the opinions of a crowd of ...
In a prediction tournament, contestants “forecast” by asserting a numerical probability for each of ...
The M5 forecasting competition has provided strong empirical evidence that machine learning methods ...
Simple average of subjective forecasts is known to be effective in estimating uncertain quantities. ...
Scoring rules for eliciting expert predictions of random variables are usu-ally developed assuming t...
In this paper we challenge the traditional design used for forecasting competitions. We implement an...
The M3-Competition continues to improve the design of forecasting competitions: It examines more ser...
In this paper we design and test a competitive forecasting mechanism based on the Colonel Blotto gam...
Five university-based research groups competed to recruit forecasters, elicit their predictions, and...
Strictly proper scoring rules, including the Brier score and the logarithmic score, are standard met...
In a prediction contest participants compete for a prize by submitting guesses regarding an unknown ...
Forecasting methods are routinely employed to predict the outcome of competitive events (CEs) and to...
We initiate the study of incentive-compatible forecasting competitions in which multiple forecasters...
Proper scoring rules can be used to incentivize a forecaster to truthfully report her private belie...
Forecasting is modeled as a rank-order contest with privately informed players. Rankorder contests a...
This paper examines the prediction contests as a vehicle for aggregating the opinions of a crowd of ...
In a prediction tournament, contestants “forecast” by asserting a numerical probability for each of ...
The M5 forecasting competition has provided strong empirical evidence that machine learning methods ...
Simple average of subjective forecasts is known to be effective in estimating uncertain quantities. ...
Scoring rules for eliciting expert predictions of random variables are usu-ally developed assuming t...
In this paper we challenge the traditional design used for forecasting competitions. We implement an...
The M3-Competition continues to improve the design of forecasting competitions: It examines more ser...
In this paper we design and test a competitive forecasting mechanism based on the Colonel Blotto gam...
Five university-based research groups competed to recruit forecasters, elicit their predictions, and...
Strictly proper scoring rules, including the Brier score and the logarithmic score, are standard met...
In a prediction contest participants compete for a prize by submitting guesses regarding an unknown ...
Forecasting methods are routinely employed to predict the outcome of competitive events (CEs) and to...