English

From Proper Scoring Rules to Max-Min Optimal Forecast Aggregation

Computer Science and Game Theory 2023-08-22 v2

Abstract

This paper forges a strong connection between two seemingly unrelated forecasting problems: incentive-compatible forecast elicitation and forecast aggregation. Proper scoring rules are the well-known solution to the former problem. To each such rule ss we associate a corresponding method of aggregation, mapping expert forecasts and expert weights to a "consensus forecast," which we call *quasi-arithmetic (QA) pooling* with respect to ss. We justify this correspondence in several ways: - QA pooling with respect to the two most well-studied scoring rules (quadratic and logarithmic) corresponds to the two most well-studied forecast aggregation methods (linear and logarithmic). - Given a scoring rule ss used for payment, a forecaster agent who sub-contracts several experts, paying them in proportion to their weights, is best off aggregating the experts' reports using QA pooling with respect to ss, meaning this strategy maximizes its worst-case profit (over the possible outcomes). - The score of an aggregator who uses QA pooling is concave in the experts' weights. As a consequence, online gradient descent can be used to learn appropriate expert weights from repeated experiments with low regret. - The class of all QA pooling methods is characterized by a natural set of axioms (generalizing classical work by Kolmogorov on quasi-arithmetic means).

Keywords

Cite

@article{arxiv.2102.07081,
  title  = {From Proper Scoring Rules to Max-Min Optimal Forecast Aggregation},
  author = {Eric Neyman and Tim Roughgarden},
  journal= {arXiv preprint arXiv:2102.07081},
  year   = {2023}
}

Comments

41 pages, 2 figures

R2 v1 2026-06-23T23:08:23.545Z