Datasets:
Tasks:
Text-to-Image
Modalities:
Image
Formats:
imagefolder
Languages:
English
Size:
1K - 10K
Tags:
math
License:
File size: 1,670 Bytes
78abd5f a656885 78abd5f a656885 78abd5f 08720be 3b9ef7f 78abd5f 0f4a25f 08720be 0f4a25f 08720be 1b8f0f7 08720be 1b8f0f7 08720be a656885 |
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---
license: mit
task_categories:
- text-to-image
language:
- en
size_categories:
- 1K<n<10K
tags:
- math
---
# MM_Math Datasets
We introduce our multimodal mathematics dataset, MM-MATH,.
This dataset is collected from real middle school exams in China, and all the math problems are open-ended to evaluate the mathematical problem-solving abilities of current multimodal models. MM-MATH is annotated with fine-grained three-dimensional labels: difficulty, grade, and knowledge points. The difficulty level is determined based on the average scores of student exams, the grade labels are derived from the educational content of different grades from which the problems were collected, and the knowledge points are categorized by teachers according to the problems' content.
## MM_Math Deacription
The MM_math description contains two documents:
1. **Image.zip**: This archive includes images used in the problems.
2. **MM_Math.jsonl**: This file contains collected middle school exam questions, including the problem statement, solution process, and 3 dimension annotations.
## Data Format
All data in **MM-Math** are standardized to the following format:
```json
{
"question": "The text of each question statement conforms to LaTeX code.",
"file_name": "The names of the question images in the image folder.",
"solution": "The text of each question' soluation conforms to LaTeX code.",
"year": "The grade level annotated from each year examination.",
"difficult": "The difficult level annotated by examination scores.",
"knowledge": "Each knowledge points contained in the question, which is annotated by middle school teacher."
}
``` |