SimBA: Simplifying Benchmark Analysis Using Performance Matrices Alone
October 20, 2025 ยท Declared Dead ยท ๐ Conference on Empirical Methods in Natural Language Processing
Repo contents: README.md
Authors
Nishant Subramani, Alfredo Gomez, Mona Diab
arXiv ID
2510.17998
Category
cs.CL: Computation & Language
Cross-listed
cs.AI,
cs.LG
Citations
0
Venue
Conference on Empirical Methods in Natural Language Processing
Repository
https://github.com/nishantsubramani/simba
Last Checked
1 month ago
Abstract
Modern language models are evaluated on large benchmarks, which are difficult to make sense of, especially for model selection. Looking at the raw evaluation numbers themselves using a model-centric lens, we propose SimBA, a three phase framework to Simplify Benchmark Analysis. The three phases of SimBA are: stalk, where we conduct dataset & model comparisons, prowl, where we discover a representative subset, and pounce, where we use the representative subset to predict performance on a held-out set of models. Applying SimBA to three popular LM benchmarks: HELM, MMLU, and BigBenchLite reveals that across all three benchmarks, datasets and models relate strongly to one another (stalk). We develop an representative set discovery algorithm which covers a benchmark using raw evaluation scores alone. Using our algorithm, we find that with 6.25% (1/16), 1.7% (1/58), and 28.4% (21/74) of the datasets for HELM, MMLU, and BigBenchLite respectively, we achieve coverage levels of at least 95% (prowl). Additionally, using just these representative subsets, we can both preserve model ranks and predict performance on a held-out set of models with near zero mean-squared error (pounce). Taken together, SimBA can help model developers improve efficiency during model training and dataset creators validate whether their newly created dataset differs from existing datasets in a benchmark. Our code is open source, available at https://github.com/nishantsubramani/simba.
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