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# Mathematics Dataset |
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This dataset code generates mathematical question and answer pairs, from a range |
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of question types at roughly school-level difficulty. This is designed to test |
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the mathematical learning and algebraic reasoning skills of learning models. |
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Original paper: [Analysing Mathematical |
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Reasoning Abilities of Neural Models](https://openreview.net/pdf?id=H1gR5iR5FX) |
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(Saxton, Grefenstette, Hill, Kohli). |
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## Example questions |
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``` |
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Question: Solve -42*r + 27*c = -1167 and 130*r + 4*c = 372 for r. |
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Answer: 4 |
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Question: Calculate -841880142.544 + 411127. |
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Answer: -841469015.544 |
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Question: Let x(g) = 9*g + 1. Let q(c) = 2*c + 1. Let f(i) = 3*i - 39. Let w(j) = q(x(j)). Calculate f(w(a)). |
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Answer: 54*a - 30 |
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Question: Let e(l) = l - 6. Is 2 a factor of both e(9) and 2? |
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Answer: False |
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Question: Let u(n) = -n**3 - n**2. Let e(c) = -2*c**3 + c. Let l(j) = -118*e(j) + 54*u(j). What is the derivative of l(a)? |
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Answer: 546*a**2 - 108*a - 118 |
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Question: Three letters picked without replacement from qqqkkklkqkkk. Give prob of sequence qql. |
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Answer: 1/110 |
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``` |
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## Pre-generated data |
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[Pre-generated files](https://console.cloud.google.com/storage/browser/mathematics-dataset) |
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### Version 1.0 |
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This is the version released with the original paper. It contains 2 million |
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(question, answer) pairs per module, with questions limited to 160 characters in |
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length, and answers to 30 characters in length. Note the training data for each |
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question type is split into "train-easy", "train-medium", and "train-hard". This |
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allows training models via a curriculum. The data can also be mixed together |
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uniformly from these training datasets to obtain the results reported in the |
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paper. Categories: |
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* **algebra** (linear equations, polynomial roots, sequences) |
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* **arithmetic** (pairwise operations and mixed expressions, surds) |
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* **calculus** (differentiation) |
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* **comparison** (closest numbers, pairwise comparisons, sorting) |
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* **measurement** (conversion, working with time) |
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* **numbers** (base conversion, remainders, common divisors and multiples, |
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primality, place value, rounding numbers) |
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* **polynomials** (addition, simplification, composition, evaluating, expansion) |
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* **probability** (sampling without replacement) |
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## Getting the source |
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### PyPI |
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The easiest way to get the source is to use pip: |
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```shell |
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$ pip install mathematics_dataset |
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``` |
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### From GitHub |
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Alternately you can get the source by cloning the mathematics_dataset |
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repository: |
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```shell |
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$ git clone https://github.com/deepmind/mathematics_dataset |
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$ pip install --upgrade mathematics_dataset/ |
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``` |
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## Generating examples |
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Generated examples can be printed to stdout via the `generate` script. For |
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example: |
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```shell |
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python -m mathematics_dataset.generate --filter=linear_1d |
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``` |
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will generate example (question, answer) pairs for solving linear equations in |
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one variable. |
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We've also included `generate_to_file.py` as an example of how to write the |
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generated examples to text files. You can use this directly, or adapt it for |
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your generation and training needs. |
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## Dataset Metadata |
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The following table is necessary for this dataset to be indexed by search |
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engines such as <a href="https://g.co/datasetsearch">Google Dataset Search</a>. |
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<div itemscope itemtype="http://schema.org/Dataset"> |
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<table> |
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<tr> |
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<th>property</th> |
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<th>value</th> |
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</tr> |
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<tr> |
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<td>name</td> |
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<td><code itemprop="name">Mathematics Dataset</code></td> |
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</tr> |
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<tr> |
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<td>url</td> |
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<td><code itemprop="url">https://github.com/deepmind/mathematics_dataset</code></td> |
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</tr> |
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<tr> |
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<td>sameAs</td> |
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<td><code itemprop="sameAs">https://github.com/deepmind/mathematics_dataset</code></td> |
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</tr> |
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<tr> |
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<td>description</td> |
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<td><code itemprop="description">This dataset consists of mathematical question and answer pairs, from a range |
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of question types at roughly school-level difficulty. This is designed to test |
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the mathematical learning and algebraic reasoning skills of learning models.\n |
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\n |
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## Example questions\n |
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\n |
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```\n |
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Question: Solve -42*r + 27*c = -1167 and 130*r + 4*c = 372 for r.\n |
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Answer: 4\n |
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\n |
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Question: Calculate -841880142.544 + 411127.\n |
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Answer: -841469015.544\n |
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\n |
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Question: Let x(g) = 9*g + 1. Let q(c) = 2*c + 1. Let f(i) = 3*i - 39. Let w(j) = q(x(j)). Calculate f(w(a)).\n |
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Answer: 54*a - 30\n |
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```\n |
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\n |
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It contains 2 million |
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(question, answer) pairs per module, with questions limited to 160 characters in |
|
length, and answers to 30 characters in length. Note the training data for each |
|
question type is split into "train-easy", "train-medium", and "train-hard". This |
|
allows training models via a curriculum. The data can also be mixed together |
|
uniformly from these training datasets to obtain the results reported in the |
|
paper. Categories:\n |
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\n |
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* **algebra** (linear equations, polynomial roots, sequences)\n |
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* **arithmetic** (pairwise operations and mixed expressions, surds)\n |
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* **calculus** (differentiation)\n |
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* **comparison** (closest numbers, pairwise comparisons, sorting)\n |
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* **measurement** (conversion, working with time)\n |
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* **numbers** (base conversion, remainders, common divisors and multiples,\n |
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primality, place value, rounding numbers)\n |
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* **polynomials** (addition, simplification, composition, evaluating, expansion)\n |
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* **probability** (sampling without replacement)</code></td> |
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</tr> |
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<tr> |
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<td>provider</td> |
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<td> |
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<div itemscope itemtype="http://schema.org/Organization" itemprop="provider"> |
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<table> |
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<tr> |
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<th>property</th> |
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<th>value</th> |
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</tr> |
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<tr> |
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<td>name</td> |
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<td><code itemprop="name">DeepMind</code></td> |
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</tr> |
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<tr> |
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<td>sameAs</td> |
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<td><code itemprop="sameAs">https://en.wikipedia.org/wiki/DeepMind</code></td> |
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</tr> |
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</table> |
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</div> |
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</td> |
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</tr> |
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<tr> |
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<td>citation</td> |
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<td><code itemprop="citation">https://identifiers.org/arxiv:1904.01557</code></td> |
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</tr> |
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</table> |
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</div> |
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