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metadata
license: cc-by-4.0
task_categories:
  - summarization
language:
  - en
pretty_name: Custom CNN/Daily Mail Summarization Dataset
size_categories:
  - n<1K

Dataset Card for Custom Text Dataset

Dataset Name

Custom CNN/Daily Mail Summarization Dataset

Overview

This dataset is a custom version of the CNN/Daily Mail dataset, designed for text summarization tasks. It contains news articles and their corresponding summaries.

Composition

The dataset consists of two splits:

  • Train: 1 custom example
  • Test: 100 examples from the original CNN/Daily Mail dataset

Each example contains:

  • 'sentence': The full text of a news article
  • 'labels': The summary of the article

Collection Process

The training data is a custom example created manually, while the test data is sampled from the CNN/Daily Mail dataset (version 3.0.0) available on Hugging Face.

Preprocessing

No specific preprocessing was applied beyond the original CNN/Daily Mail dataset preprocessing.

How to Use

from datasets import load_from_disk

# Load the dataset
dataset = load_from_disk("./results/custom_dataset/")

# Access the data
train_data = dataset['train']
test_data = dataset['test']

# Example usage
print(train_data['sentence'])
print(train_data['labels'])

Evaluation

This dataset is intended for text summarization tasks. Common evaluation metrics include ROUGE scores, which measure the overlap between generated summaries and reference summaries.

Limitations

  • The training set is extremely small (1 example), which may limit its usefulness for model training.
  • The test set is a subset of the original CNN/Daily Mail dataset, which may not represent the full diversity of news articles.

Ethical Considerations

  • The dataset contains news articles, which may include sensitive or biased content.
  • Users should be aware of potential copyright issues when using news content for model training or deployment.
  • Care should be taken to avoid generating or propagating misleading or false information when using models trained on this dataset.