MMODELYST
Papers/ForeSci: Evaluating LLM Agents for Forward-Looking AI Research Judgment
PAP

ForeSci: Evaluating LLM Agents for Forward-Looking AI Research Judgment

Jun 4, 2026

arXiv
Abstract

AI research often requires decisions before future evidence exists: which bottleneck to attack, which direction to pursue, or where a project should be positioned. We introduce ForeSci, a temporally controlled benchmark for evaluating whether LLM agents can make such forward-looking research judgements from historical evidence. ForeSci contains 500 tasks across four fast-moving AI domains and four decision families. Each task is paired with a cutoff-aligned offline knowledge base; post-cutoff papers are hidden during generation and used only for validation. To avoid random future-event prediction, tasks are derived from pre-cutoff taxonomy branches and evidence signals, and answer-generation backbones are selected to precede the task cutoffs. We evaluate native LLMs, Hybrid RAG, and three research-agent adaptations across four backbones. Results show that explicit evidence organization improves traceability and factual support, but gains depend strongly on the decision family. Diagnostics reveal a recurring evidence-decision decoupling: agents may cite relevant evidence while forecasting the wrong research object. ForeSci turns forward-looking AI research judgement into a controlled benchmark for evaluating research agents as decision-making systems.

Select text to highlight · click a highlight to remove · saved in this browser only
Authors
Qiuyu Tian, Haojie Yin, Yingce Xia, Youyong Kong, Zequn Liu
Your notes (browser-local)
saved
Cross-links
No linked entities.
arXiv:2606.00644