FUSE: Ensembling Verifiers with Zero Labeled Data
About
Verification of model outputs is rapidly emerging as a key primitive for both training and real-world deployment of large language models (LLMs). In practice, this often involves using imperfect LLM judges and reward models since ground truth acquisition can be time-consuming and expensive. We introduce Fully Unsupervised Score Ensembling (FUSE), a method for improving verification quality by ensembling verifiers without access to ground truth correctness labels. The key idea behind FUSE is to control conditional dependencies between verifiers in a manner that improves the unsupervised performance of a class of spectral algorithms from the ensembling literature. Despite requiring zero ground truth labels, FUSE typically matches or improves upon semi-supervised alternatives in test-time scaling experiments with diverse sets of generator models, verifiers, and benchmarks. In particular, we validate our method on both conventional academic benchmarks such as GPQA Diamond and on frontier, unsaturated benchmarks such as Humanity's Last Exam and IMO Shortlist questions.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Multi-task Language Understanding | MMLU | MMLU Accuracy94.1 | 442 | |
| Mathematical Reasoning | MATH 500 | -- | 384 | |
| Language Understanding | MMLU-Pro | -- | 116 | |
| Question Answering | GPQA Diamond | -- | 61 | |
| Multi-task Language Understanding | MMLU-Pro | Accuracy91.4 | 57 | |
| Multiple-choice Question Answering | GPQA | Accuracy (%)66.8 | 44 | |
| Multiple-choice Question Answering | GPQA Diamond | Accuracy64.4 | 18 | |
| Mathematical Reasoning | IMO Shortlist | Accuracy63.8 | 8 | |
| Question Answering | Humanity's Last Exam (HLE) curated 649-question subset (test) | Accuracy54.3 | 7 | |
| Language Understanding | MMLU | -- | 6 |