AIJul 30, 2025

Argumentatively Coherent Judgmental Forecasting

arXiv:2507.23163v21 citationsh-index: 18ECAI
Originality Incremental advance
AI Analysis

This addresses the need for reliable forecasting in domains relying on human or AI opinions, though it is incremental as it builds on existing argumentation-based methods.

The paper tackles the problem of ensuring argumentative coherence in judgmental forecasting, showing that filtering out incoherent predictions improves forecasting accuracy for both human and LLL-based forecasters, with consistent gains observed.

Judgmental forecasting employs human opinions to make predictions about future events, rather than exclusively historical data as in quantitative forecasting. When these opinions form an argumentative structure around forecasts, it is useful to study the properties of the forecasts from an argumentative perspective. In this paper, we advocate and formally define a property of argumentative coherence, which, in essence, requires that a forecaster's reasoning is coherent with their forecast. We then conduct three evaluations with our notion of coherence. First, we assess the impact of enforcing coherence on human forecasters as well as on Large Language Model (LLM)-based forecasters, given that they have recently shown to be competitive with human forecasters. In both cases, we show that filtering out incoherent predictions improves forecasting accuracy consistently, supporting the practical value of coherence in both human and LLM-based forecasting. Then, via crowd-sourced user experiments, we show that, despite its apparent intuitiveness and usefulness, users do not generally align with this coherence property. This points to the need to integrate, within argumentation-based judgmental forecasting, mechanisms to filter out incoherent opinions before obtaining group forecasting predictions.

Foundations

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