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Prior-Agnostic Robust Forecast Aggregation

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abstract

Robust forecast aggregation combines the predictions of multiple information sources to perform well in the worst case across all possible information structures. Previous work largely focuses on settings with a known binary state space, where the state is either 0 or 1. We study prior-agnostic robust forecast aggregation in which the aggregator observes only experts' reports, yet is ignorant of both the underlying joint information structure and the full prior, including the underlying state space. Unlike the standard model that fixes the binary state space {0, 1}, we allow the (binary) unknown state values to be arbitrary numbers in [0, 1], so the same reported probability may correspond to very different realized outcome frequencies across environments. Our main contribution is a simple, explicit, closed-form log-odds aggregator that linearly pools forecasts in logit space, together with (nearly-)tight minimax-regret guarantees across three knowledge regimes. We first show that under conditionally independent (CI) signals, robust aggregation with an unknown state space is strictly harder than in the known-state setting by establishing a larger lower bound, and our aggregation rule can achieve a worst-case regret of 0.0255. Along the way, we also characterize tight regret bounds for Blackwell-ordered structures and for general information structures. In the classical setting with known state space {0,1}, our aggregator achieves regret strictly below 0.0226 for CI structures. To the best of our knowledge, this is the first explicit closed-form aggregator that achieves a regret upper bound strictly less than 0.0226. Finally, we extend the model where the aggregator additionally knows each expert's marginal forecast distribution; in this setting, with the CI structures, we show that a generalized log-odds rule achieves regret of 0.0228, complementing with a lower bound of 0.0225.

fields

econ.TH 1

years

2026 1

verdicts

UNVERDICTED 1

representative citing papers

Robust Aggregation of Calibrated Forecasts

econ.TH · 2026-06-30 · unverdicted · novelty 7.0

Introduces a robust max-min benchmark for aggregating calibrated forecasts that is LP-tractable, dominates OIH, and is attained by online algorithms under forecast-only feedback.

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  • Robust Aggregation of Calibrated Forecasts econ.TH · 2026-06-30 · unverdicted · none · ref 41 · internal anchor

    Introduces a robust max-min benchmark for aggregating calibrated forecasts that is LP-tractable, dominates OIH, and is attained by online algorithms under forecast-only feedback.