Forecasting Future Language: Context Design for Mention Markets
Sumin Kim, Jihoon Kwon, Yoon Kim, Nicole Kagan, Raffi Khatchadourian, Wonbin Ahn, Alejandro Lopez-Lira, Jaewon Lee, Yoontae Hwang, Oscar Levy, Yongjae Lee, Chanyeol Choi

TL;DR
This paper explores how to design input contexts for large language models to improve forecasting accuracy in mention markets, introducing a novel prompting method that leverages market probabilities as priors.
Contribution
The paper introduces Market-Conditioned Prompting (MCP), a new technique that uses market probabilities as priors for LLMs, enhancing forecast calibration and robustness.
Findings
Rich context improves forecast accuracy.
MCP yields better-calibrated predictions.
MixMCP outperforms individual market or LLM forecasts.
Abstract
Mention markets, a type of prediction market in which contracts resolve based on whether a specified keyword is mentioned during a future public event, require accurate probabilistic forecasts of keyword-mention outcomes. While recent work shows that large language models (LLMs) can generate forecasts competitive with human forecasters, it remains unclear how input context should be designed to support accurate prediction. In this paper, we study this question through experiments on earnings-call mention markets, which require forecasting whether a company will mention a specified keyword during its upcoming call. We run controlled comparisons varying (i) which contextual information is provided (news and/or prior earnings-call transcripts) and (ii) how \textit{market probability}, (i.e., prediction market contract price) is used. We introduce Market-Conditioned Prompting (MCP), which…
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Taxonomy
TopicsForecasting Techniques and Applications · Stock Market Forecasting Methods · Sports Analytics and Performance
