Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

GIANTS: Generative Insight Anticipation from Scientific Literature

About

Scientific breakthroughs often emerge from synthesizing prior ideas into novel contributions. While language models (LMs) show promise in scientific discovery, their ability to perform this targeted, literature-grounded synthesis remains underexplored. We introduce insight anticipation, a generation task in which a model predicts a downstream paper's core insight from its foundational parent papers. To evaluate this capability, we develop GiantsBench, a benchmark of 17k examples across eight scientific domains, where each example consists of a set of parent papers paired with the core insight of a downstream paper. We evaluate models using an LM judge that scores similarity between generated and ground-truth insights, and show that these similarity scores correlate with expert human ratings. Finally, we present GIANTS-4B, an LM trained via reinforcement learning (RL) to optimize insight anticipation using these similarity scores as a proxy reward. Despite its smaller open-source architecture, GIANTS-4B outperforms proprietary baselines and generalizes to unseen domains, achieving a 34% relative improvement in similarity score over gemini-3-pro. Human evaluations further show that GIANTS-4B produces insights that are more conceptually clear than those of the base model. In addition, SciJudge-30B, a third-party model trained to compare research abstracts by likely citation impact, predicts that insights generated by GIANTS-4B are more likely to lead to higher citations, preferring them over the base model in 68% of pairwise comparisons. We release our code, benchmark, and model to support future research in automated scientific discovery.

Joy He-Yueya, Anikait Singh, Ge Gao, Michael Y. Li, Sherry Yang, Chelsea Finn, Emma Brunskill, Noah D. Goodman• 2026

Related benchmarks

TaskDatasetResultRank
Theorem GenerationFuture Theorem Prediction dataset (test)
Structure Score0.165
15
Future Paper Retrieval2K (47K pool) (test)
Target Similarity (Tgt-Sim)0.489
11
Mathematical Claim GenerationMathematical Claim Generation LLM Judge Evaluation pre-2024 GPT
Content Score1.91
8
Generative Insight AnticipationGiantsBench (test)
Economics Score5.47
6
Showing 4 of 4 rows

Other info

Follow for update