# MATH ℹ️ This is the 4-shot variant! ## Paper Measuring Mathematical Problem Solving With the MATH Dataset https://arxiv.org/abs/2103.03874 Many intellectual endeavors require mathematical problem solving, but this skill remains beyond the capabilities of computers. To measure this ability in machine learning models, we introduce MATH, a new dataset of 12,500 challenging competition mathematics problems. Each problem in MATH has a full step-by-step solution which can be used to teach models to generate answer derivations and explanations. NOTE: The few-shot and the generated answer extraction is based on the [Minerva](https://arxiv.org/abs/2206.14858) and exact match equivalence is calculated using the `sympy` library. This requires additional dependencies, which can be installed via the `lm-eval[math]` extra. Homepage: https://github.com/hendrycks/math ## Citation ``` @article{hendrycksmath2021, title={Measuring Mathematical Problem Solving With the MATH Dataset}, author={Dan Hendrycks and Collin Burns and Saurav Kadavath and Akul Arora and Steven Basart and Eric Tang and Dawn Song and Jacob Steinhardt}, journal={NeurIPS}, year={2021} } @misc{2206.14858, Author = {Aitor Lewkowycz and Anders Andreassen and David Dohan and Ethan Dyer and Henryk Michalewski and Vinay Ramasesh and Ambrose Slone and Cem Anil and Imanol Schlag and Theo Gutman-Solo and Yuhuai Wu and Behnam Neyshabur and Guy Gur-Ari and Vedant Misra}, Title = {Solving Quantitative Reasoning Problems with Language Models}, Year = {2022}, Eprint = {arXiv:2206.14858}, } ``` ### Groups, Benchmarks and Tasks #### Benchmarks - `minerva_math` #### Groups - `math_word_problems` - `greedy_until` #### Tasks - `minerva_math_algebra` - `minerva_math_counting_and_prob` - `minerva_math_geometry` - `minerva_math_intermediate_algebra` - `minerva_math_num_theory` - `minerva_math_prealgebra` - `minerva_math_precalc` ### Checklist The checklist is the following: For adding novel benchmarks/datasets to the library: * [x] Is the task an existing benchmark in the literature? * [x] Have you referenced the original paper that introduced the task? * [x] If yes, does the original paper provide a reference implementation? If so, have you checked against the reference implementation and documented how to run such a test? * The implementation in the original paper is one where the model is first fine-tuned on the data. They do have a few-shot evaluation for GPT-3, however the few-shot context used here is sourced from [Lewkowycz et al](https://arxiv.org/abs/2206.14858). The achieved accuracy on Llama-2 models is comparable to that provided in the paper, though not identical. If other tasks on this dataset are already supported: * [x] Is the "Main" variant of this task clearly denoted? * [x] Have you provided a short sentence in a README on what each new variant adds / evaluates? * [x] Have you noted which, if any, published evaluation setups are matched by this variant? ### Variant Wishlist - [ ] zero-shot variant