首页|From News to Summaries: Building a Hungarian Corpus for Extractive and Abstractive Summarization

From News to Summaries: Building a Hungarian Corpus for Extractive and Abstractive Summarization

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Training summarization models requires substantial amounts of training data。 However for less resourceful languages like Hungarian, openly available models and datasets are notably scarce。 To address this gap our paper introduces HunSum-2 an open-source Hungarian corpus suitable for training abstractive and extractive summarization models。 The dataset is assembled from segments of the Common Crawl corpus undergoing thorough cleaning, preprocessing and deduplication。 In addition to abstractive summarization we generate sentence-level labels for extractive summarization using sentence similarity。 We train baseline models for both extractive and abstractive summarization using the collected dataset。 To demonstrate the effectiveness of the trained models, we perform both quantitative and qualitative evaluation。 Our dataset, models and code are publicly available, encouraging replication, further research, and real-world applications across various domains。

abstractive summarizationextractive summarizationHungarian

Botond Barta、Dorina Lakatos、Attila Nagy、Milan Konor Nyist、Judit Acs

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HUN-REN Institute for Computer Science and Control##Department of Automation and Applied Informatics Budapest University of Technology and Economics

Department of Automation and Applied Informatics Budapest University of Technology and Economics

HUN-REN Institute for Computer Science and Control

Joint International Conference on Computational Linguistics, Language Resources and Evaluation

Torino(IT)

2024 Joint International Conference on Computational Linguistics, Language Resources and Evaluation

7503-7509

2024