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Authors

Karl Cobbe·Vineet Kosaraju·Mohammad Bavarian·Mark Chen·Heewoo Jun·Lukasz Kaiser·Matthias Plappert·Jerry Tworek·Jacob Hilton·Reiichiro Nakano·Christopher Hesse·John Schulman

Credibility Rating

3/5
Good(3)

Good quality. Reputable source with community review or editorial standards, but less rigorous than peer-reviewed venues.

Rating inherited from publication venue: arXiv

Data Status

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Abstract

State-of-the-art language models can match human performance on many tasks, but they still struggle to robustly perform multi-step mathematical reasoning. To diagnose the failures of current models and support research, we introduce GSM8K, a dataset of 8.5K high quality linguistically diverse grade school math word problems. We find that even the largest transformer models fail to achieve high test performance, despite the conceptual simplicity of this problem distribution. To increase performance, we propose training verifiers to judge the correctness of model completions. At test time, we generate many candidate solutions and select the one ranked highest by the verifier. We demonstrate that verification significantly improves performance on GSM8K, and we provide strong empirical evidence that verification scales more effectively with increased data than a finetuning baseline.

Cited by 1 page

PageTypeQuality
AI Capability Threshold ModelAnalysis72.0
Resource ID: edaaae1b94942ea9 | Stable ID: ZTkzM2JiOG