English

Bench to the Future: A Pastcasting Benchmark for Forecasting Agents

Computation and Language 2025-06-30 v1 Artificial Intelligence Machine Learning

Abstract

Forecasting is a challenging task that offers a clearly measurable way to study AI systems. Forecasting requires a large amount of research on the internet, and evaluations require time for events to happen, making the development of forecasting benchmarks challenging. To date, no forecasting benchmark provides a realistic, hermetic, and repeatable environment for LLM forecasters. We introduce Bench To the Future (BTF), a "pastcasting" benchmark with hundreds of high-quality questions for which the resolution is already known. Each question is accompanied by a large offline corpus of tens of thousands of relevant web pages, enabling a way to elicit realistic "forecasts" on past events from LLMs. Results suggest that our pastcasting environment can produce results comparable to those based on forecasts using the internet on at-the-time unresolved questions. We show results benchmarking agent and chain-of-thought forecasting approaches using several LLMs, including the recently-released Claude 4 models, and demonstrate BTF's ability to track steady forecasting capability progress over time. We intend this to be a living benchmark, with new questions added continually to account for increasing training data cutoff dates. We invite researchers to contact us at hello@futuresearch.ai to utilize our benchmark or tooling for their own research.

Keywords

Cite

@article{arxiv.2506.21558,
  title  = {Bench to the Future: A Pastcasting Benchmark for Forecasting Agents},
  author = {FutureSearch and : and Jack Wildman and Nikos I. Bosse and Daniel Hnyk and Peter Mühlbacher and Finn Hambly and Jon Evans and Dan Schwarz and Lawrence Phillips},
  journal= {arXiv preprint arXiv:2506.21558},
  year   = {2025}
}
R2 v1 2026-07-01T03:35:02.677Z