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SciTSR-PD
A public-domain subset of SciTSR, a large-scale table structure recognition dataset of scientific tables extracted from arXiv LaTeX source files.
This subset contains only tables whose source papers carry a CC0 or equivalent public domain dedication — no attribution required, no restrictions on commercial or derivative use.
Dataset Details
| Split | Tables | Papers |
|---|---|---|
| train | 89 | — |
| test | 19 | — |
| total | 108 | 52 |
Source paper licenses present: CC0, other:http://creativecommons.org/licenses/publicdomain/ (old CC public domain dedication, functionally equivalent to CC0).
Why This Subset Exists
The full SciTSR dataset (15,000 tables) was crawled from arXiv without license filtering. ~90% of those papers use the arXiv non-exclusive license, which retains full author copyright and is not permissive for use in commercial training pipelines.
This subset was produced by querying the arXiv OAI-PMH API for the license of each source paper and retaining only those with no conditions on downstream use. See SciTSR-CC-BY-NC-SA for a larger subset suitable for non-commercial open-weight model releases.
Dataset Structure
Each row represents one table extracted from a scientific PDF.
| Column | Type | Description |
|---|---|---|
table_id |
string |
Unique identifier, format {arxiv_id}v{version}.{table_index} |
paper_id |
string |
arXiv paper ID |
paper_title |
string |
Paper title from arXiv metadata |
paper_authors |
list[string] |
Author names from arXiv metadata |
paper_license |
string |
License of the source paper |
split |
string |
train or test |
is_comp |
bool |
Whether this table is in the SciTSR-COMP subset (tables with at least one spanning cell) |
image |
Image |
PNG render of the table (150 DPI) |
pdf |
binary |
Raw PDF of the isolated table |
chunks |
list[dict] |
Pre-extracted text spans with bounding box coordinates {text, x1, x2, y1, y2} (PDF coordinate space, bottom-left origin) |
cells |
list[dict] |
Structure annotation: {id, tex, content, start_row, end_row, start_col, end_col} |
relations |
list[dict] |
Chunk adjacency labels {chunk_id_1, chunk_id_2, relation, num_blank} where relation=1 is horizontal and relation=2 is vertical. Empty for test rows. |
Usage
from datasets import load_dataset
ds = load_dataset("rootsautomation/SciTSR-pd")
# Iterate train split
for row in ds["train"]:
image = row["image"] # PIL Image
cells = row["cells"] # list of cell dicts
chunks = row["chunks"] # list of chunk dicts with positions
print(row["table_id"], row["paper_title"])
Important Caveats
- Annotation quality: Structure annotations were generated automatically from LaTeX source by the original SciTSR pipeline. Simple grid tables are generally reliable. Tables with spanning cells (
is_comp=True) have a higher rate of annotation errors, particularly in spanning cell coordinates. Treat annotations as noisy weak supervision rather than ground truth. - Chunk coordinates: The
chunksfield was pre-processed by TabbyCDF and may contain noise. - Relations: Available for train split only; empty list for test.
Source & Citation
This dataset is a license-filtered derivative of SciTSR. If you use this dataset, please cite the original work:
@article{chi2019complicated,
title={Complicated Table Structure Recognition},
author={Chi, Zewen and Huang, Heyan and Xu, Heng-Da and Yu, Houjin and Yin, Wanxuan and Mao, Xian-Ling},
journal={arXiv preprint arXiv:1908.04729},
year={2019}
}
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