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--- |
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dataset_info: |
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- config_name: mlsum_tr_ext |
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- config_name: xtinge-sum_tr_ext |
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- config_name: tes |
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configs: |
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- config_name: mlsum_tr_ext |
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data_files: |
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- split: train |
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path: MLSUM_TR_EXT/train* |
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- split: test |
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path: MLSUM_TR_EXT/test* |
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- split: val |
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path: MLSUM_TR_EXT/val* |
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- config_name: xtinge-sum_tr_ext |
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data_files: |
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- split: test |
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path: XTINGE-SUM_TR_EXT/XTINGE-SUM_TR_EXT* |
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- config_name: tes |
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data_files: |
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- split: test |
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path: TES/tes* |
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task_categories: |
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- summarization |
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license: gpl-3.0 |
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--- |
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# XTINGE Turkish Extractive Summarization Datasets |
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This repository hosts three datasets created for advancing Turkish extractive text summarization research: MLSUM_TR_EXT, TES, and XTINGE-SUM_TR_EXT. These datasets are designed to support the development of models capable of generating concise and relevant extractive summaries of Turkish texts. |
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Below is a Python example showcasing how to download and use these datasets: |
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```python |
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from datasets import load_dataset |
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# Load the MLSUM_TR_EXT dataset |
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mlsum_tr_ext = load_dataset("xtinge/turkish-extractive-summarization-dataset", "mlsum_tr_ext") |
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# Load the TES dataset |
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tes = load_dataset("xtinge/turkish-extractive-summarization-dataset", "tes") |
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# Load the xtinge-sum_tr_ext dataset |
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xtinge_sum_tr_ext = load_dataset("xtinge/turkish-extractive-summarization-dataset", "xtinge-sum_tr_ext") |
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``` |
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## Dataset Details |
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### Dataset Description |
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The datasets, having a focus on Turkish text summarization, aim to advance research in this area by providing structured, annotated resources for extractive summarization tasks. These datasets are: |
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1. **MLSUM_TR_EXT**: |
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- Originates as an extension of the Turkish subset from the [MLSUM dataset](https://huggingface.co/datasets/mlsum), focusing on extractive summarization. |
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- Comprises articles from internethaber.com, with summaries derived from existing headlines for creating contextually rich extractive summaries. |
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- Sentences within these articles were selected based on their SBERT Similarity and ROUGE Scores compared to the original summaries, ensuring relevance and conciseness. |
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2. **TES**: |
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- Represents a unique collection found on [Hugging Face](https://huggingface.co/erturkerdagi/turkishExtractiveSummarization/tree/main) tailored for Turkish extractive summarization. |
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- Contains a variety of news articles annotated by three distinct annotators, each providing different perspectives and lengths, thus contributing to a rich set of summarization examples. |
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3. **XTINGE-SUM_TR_EXT**: |
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- Specifically developed to supplement existing resources by providing detailed sentence importance rankings within lengthy Wikipedia documents. |
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- Features annotations by three different annotators who meticulously ranked all sentences by importance, contributing to a comprehensive resource for studying extractive summarization. |
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- The annotation process considered Inter Annotator Agreement, specifically employing Krippendorff's alpha to ensure consistency and reliability in sentence importance assessments. |
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- **Language(s) (NLP):** Turkish |
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- **License:** [gpl-3.0] |
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## Dataset Structure |
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### Generic Structure Across Datasets |
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All three datasets share a generic structure tailored for extractive summarization tasks, comprising the following elements: |
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- **Title**: The title of the document or article, serving as a concise representation of the content. |
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- **Sentences**: The body of the text, split into sentences. This segmentation facilitates the identification of individual sentences that contribute to the summary. |
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- **Annotations**: This section includes annotations for selecting summary sentences. It is subdivided into: |
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- **Indexes**: Indices of sentences that have been selected for the summary. This field varies across datasets based on the number of annotators. |
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- **Ranking**: Rankings assigned to sentences based on their perceived importance for the summary. This feature is more prominent in datasets focusing on sentence importance ranking. |
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```python |
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{ |
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'Title': '<title_of_document>', |
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'Sentences': ['<sentence_1>', '<sentence_2>', ..., '<sentence_n>'], |
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'Annotations': { |
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'Indexes': { |
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'Annotator1': [<index_of_selected_sentence_1>, ..., <index_of_selected_sentence_m>], |
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# If there are more than one annotator |
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'Annotator2': [...], |
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# etc. |
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}, |
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'Ranking': { |
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'Annotator1': [<ranking_of_first_sentence>,<ranking_of_second_sentence>,..., <ranking_of_mth_sentence>], |
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# If there are more than one annotator |
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'Annotator2': [...], |
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# etc. |
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} |
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} |
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} |
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``` |
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## Cite XTINGE Turkish Extractive Summarization Dataset |
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``` |
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@inproceedings{xtinge_turkish_extractive, |
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title = {Extractive Summarization Data Sets Generated with Measurable Analyses}, |
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author = {Demir, İrem and Küpçü, Emel and Küpçü, Alptekin}, |
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booktitle = {Proceedings of the 32nd IEEE Conference on Signal Processing and Communications Applications}, |
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year = {2024} |
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} |
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``` |
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