The State and Fate of Summarization Datasets
Automatic summarization has consistently attracted attention, due to its versatility and wide application in various downstream tasks. Despite its popularity, we find that annotation efforts have largely been disjointed, and have lacked common terminology. Consequently, it is challenging to discover...
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Zusammenfassung: | Automatic summarization has consistently attracted attention, due to its
versatility and wide application in various downstream tasks. Despite its
popularity, we find that annotation efforts have largely been disjointed, and
have lacked common terminology. Consequently, it is challenging to discover
existing resources or identify coherent research directions. To address this,
we survey a large body of work spanning 133 datasets in over 100 languages,
creating a novel ontology covering sample properties, collection methods and
distribution. With this ontology we make key observations, including the lack
in accessible high-quality datasets for low-resource languages, and the field's
over-reliance on the news domain and on automatically collected distant
supervision. Finally, we make available a web interface that allows users to
interact and explore our ontology and dataset collection, as well as a template
for a summarization data card, which can be used to streamline future research
into a more coherent body of work. |
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DOI: | 10.48550/arxiv.2411.04585 |