Papers
arxiv:2506.00723

Pitfalls in Evaluating Language Model Forecasters

Published on May 31
· Submitted by shash42 on Jun 3
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Abstract

Evaluation of large language models for forecasting is flawed due to temporal leakage and difficulties in translating performance to real-world forecasting, necessitating more rigorous methodologies.

AI-generated summary

Large language models (LLMs) have recently been applied to forecasting tasks, with some works claiming these systems match or exceed human performance. In this paper, we argue that, as a community, we should be careful about such conclusions as evaluating LLM forecasters presents unique challenges. We identify two broad categories of issues: (1) difficulty in trusting evaluation results due to many forms of temporal leakage, and (2) difficulty in extrapolating from evaluation performance to real-world forecasting. Through systematic analysis and concrete examples from prior work, we demonstrate how evaluation flaws can raise concerns about current and future performance claims. We argue that more rigorous evaluation methodologies are needed to confidently assess the forecasting abilities of LLMs.

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We discuss challenges with evaluating claims about how well language models can predict the future.

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