annotations_creators:
- crowdsourced
language:
- ja
language_creators:
- found
license:
- cc-by-nc-sa-4.0
multilinguality:
- monolingual
pretty_name: CAMERA
size_categories: []
source_datasets:
- original
tags: []
task_categories:
- text-generation
task_ids: []
Dataset Card for CAMERA 📷
Table of Contents
- Table of Contents
- Dataset Description
- Dataset Structure
- Dataset Creation
- Considerations for Using the Data
- Additional Information
Dataset Description
- Homepage: https://github.com/CyberAgentAILab/camera
- Repository: https://github.com/shunk031/huggingface-datasets_CAMERA
Dataset Summary
From the official README.md:
CAMERA (CyberAgent Multimodal Evaluation for Ad Text GeneRAtion) is the Japanese ad text generation dataset. We hope that our dataset will be useful in research for realizing more advanced ad text generation models.
Supported Tasks and Leaderboards
[More Information Needed]
Supported Tasks
[More Information Needed]
Leaderboard
[More Information Needed]
Languages
The language data in CAMERA is in Japanese (BCP-47 ja-JP).
Dataset Structure
Data Instances
When loading a specific configuration, users has to append a version dependent suffix:
without-lp-images
from datasets import load_dataset
dataset = load_dataset("shunk031/CAMERA", name="without-lp-images")
print(dataset)
# DatasetDict({
# train: Dataset({
# features: ['asset_id', 'kw', 'lp_meta_description', 'title_org', 'title_ne1', 'title_ne2', 'title_ne3', 'domain', 'parsed_full_text_annotation'],
# num_rows: 12395
# })
# validation: Dataset({
# features: ['asset_id', 'kw', 'lp_meta_description', 'title_org', 'title_ne1', 'title_ne2', 'title_ne3', 'domain', 'parsed_full_text_annotation'],
# num_rows: 3098
# })
# test: Dataset({
# features: ['asset_id', 'kw', 'lp_meta_description', 'title_org', 'title_ne1', 'title_ne2', 'title_ne3', 'domain', 'parsed_full_text_annotation'],
# num_rows: 872
# })
# })
An example of the CAMERA (w/o LP images) dataset looks as follows:
{
"asset_id": 13861,
"kw": "仙台 ホテル",
"lp_meta_description": "仙台のホテルや旅館をお探しなら楽天トラベルへ!楽天ポイントが使えて、貯まって、とってもお得な宿泊予約サイトです。さらに割引クーポンも使える!国内ツアー・航空券・レンタカー・バス予約も!",
"title_org": "仙台市のホテル",
"title_ne1": "",
"title_ne2": "",
"title_ne3": "",
"domain": "",
"parsed_full_text_annotation": {
"text": [
"trivago",
"Oops...AccessDenied 可",
"Youarenotallowedtoviewthispage!Ifyouthinkthisisanerror,pleasecontacttrivago.",
"Errorcode:0.3c99e86e.1672026945.25ba640YourIP:240d:1a:4d8:2800:b9b0:ea86:2087:d141AffectedURL:https://www.trivago.jp/ja/odr/%E8%BB%92", "%E4%BB%99%E5%8F%B0-%E5%9B%BD%E5%86%85?search=20072325",
"Backtotrivago"
],
"xmax": [
653,
838,
765,
773,
815,
649
],
"xmin": [
547,
357,
433,
420,
378,
550
],
"ymax": [
47,
390,
475,
558,
598,
663
],
"ymin": [
18,
198,
439,
504,
566,
651
]
}
}
with-lp-images
from datasets import load_dataset
dataset = load_dataset("shunk031/CAMERA", name="with-lp-images")
print(dataset)
# DatasetDict({
# train: Dataset({
# features: ['asset_id', 'kw', 'lp_meta_description', 'title_org', 'title_ne1', 'title_ne2', 'title_ne3', 'domain', 'parsed_full_text_annotation', 'lp_image'],
# num_rows: 12395
# })
# validation: Dataset({
# features: ['asset_id', 'kw', 'lp_meta_description', 'title_org', 'title_ne1', 'title_ne2', 'title_ne3', 'domain', 'parsed_full_text_annotation', 'lp_image'],
# num_rows: 3098
# })
# test: Dataset({
# features: ['asset_id', 'kw', 'lp_meta_description', 'title_org', 'title_ne1', 'title_ne2', 'title_ne3', 'domain', 'parsed_full_text_annotation', 'lp_image'],
# num_rows: 872
# })
# })
An example of the CAMERA (w/ LP images) dataset looks as follows:
{
"asset_id": 13861,
"kw": "仙台 ホテル",
"lp_meta_description": "仙台のホテルや旅館をお探しなら楽天トラベルへ!楽天ポイントが使えて、貯まって、とってもお得な宿泊予約サイトです。さらに割引クーポンも使える!国内ツアー・航空券・レンタカー・バス予約も!",
"title_org": "仙台市のホテル",
"title_ne1": "",
"title_ne2": "",
"title_ne3": "",
"domain": "",
"parsed_full_text_annotation": {
"text": [
"trivago",
"Oops...AccessDenied 可",
"Youarenotallowedtoviewthispage!Ifyouthinkthisisanerror,pleasecontacttrivago.",
"Errorcode:0.3c99e86e.1672026945.25ba640YourIP:240d:1a:4d8:2800:b9b0:ea86:2087:d141AffectedURL:https://www.trivago.jp/ja/odr/%E8%BB%92", "%E4%BB%99%E5%8F%B0-%E5%9B%BD%E5%86%85?search=20072325",
"Backtotrivago"
],
"xmax": [
653,
838,
765,
773,
815,
649
],
"xmin": [
547,
357,
433,
420,
378,
550
],
"ymax": [
47,
390,
475,
558,
598,
663
],
"ymin": [
18,
198,
439,
504,
566,
651
]
},
"lp_image": <PIL.PngImagePlugin.PngImageFile image mode=RGBA size=1200x680 at 0x7F8513446B20>
}
Data Fields
without-lp-images
asset_id
: ids (associated with LP images)kw
: search keywordlp_meta_description
: meta description extracted from LP (i.e., LP Text)title_org
: ad text (original gold reference)title_ne{1-3}
: ad text (additonal gold references for multi-reference evaluation)domain
: industry domain (HR, EC, Fin, Edu) for industry-wise evaluationparsed_full_text_annotation
: OCR results for LP images
with-lp-images
asset_id
: ids (associated with LP images)kw
: search keywordlp_meta_description
: meta description extracted from LP (i.e., LP Text)title_org
: ad text (original gold reference)title_ne{1-3}
: ad text (additional gold references for multi-reference evaluation)domain
: industry domain (HR, EC, Fin, Edu) for industry-wise evaluationparsed_full_text_annotation
: OCR results for LP imageslp_image
: Landing page (LP) image
Data Splits
From the official paper:
Split | # of data | # of reference ad text | industry domain label |
---|---|---|---|
Train | 12,395 | 1 | - |
Valid | 3,098 | 1 | - |
Test | 869 | 4 | ✔ |
Dataset Creation
Curation Rationale
[More Information Needed]
Source Data
Initial Data Collection and Normalization
[More Information Needed]
Who are the source language producers?
[More Information Needed]
Annotations
Annotation process
[More Information Needed]
Who are the annotators?
[More Information Needed]
Personal and Sensitive Information
[More Information Needed]
Considerations for Using the Data
Social Impact of Dataset
[More Information Needed]
Discussion of Biases
[More Information Needed]
Other Known Limitations
[More Information Needed]
Additional Information
[More Information Needed]
Dataset Curators
[More Information Needed]
Licensing Information
This work is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License.
Citation Information
@inproceedings{mita-et-al:nlp2023,
author = "三田 雅人 and 村上 聡一朗 and 張 培楠",
title = "広告文生成タスクの規定とベンチマーク構築",
booktitle = "言語処理学会 第 29 回年次大会",
year = 2023,
}
Contributions
Thanks to Masato Mita, Soichiro Murakami, and Peinan Zhang for creating this dataset.