
This data collection contains diachronic Word Usage Graphs (WUGs) for German. Uses were sampled for the target words from the DWUG DE dataset and from the same source corpora. DWUG DE Resampled can thus be seen as a small-scale replication of DWUG DE. Find a description of the data format, code to process the data and further datasets on the WUGsite. Please find more information on the provided data in the papers referenced below. Reference Dominik Schlechtweg, Pierluigi Cassotti, Bill Noble, David Alfter, Sabine Schulte im Walde, Nina Tahmasebi. More DWUGs: Extending and Evaluating Word Usage Graph Datasets in Multiple Languages. Proceedings of the 2024 Conference on Empirical Methods in Natural Language Processing. Dominik Schlechtweg, Nina Tahmasebi, Simon Hengchen, Haim Dubossarsky, Barbara McGillivray. 2021. DWUG: A large Resource of Diachronic Word Usage Graphs in Four Languages. Proceedings of the 2021 Conference on Empirical Methods in Natural Language Processing.
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semantic proximity, graded word meaning annotation, diachronic usage relatedness, semantic change, word-in-context, word usage graphs
semantic proximity, graded word meaning annotation, diachronic usage relatedness, semantic change, word-in-context, word usage graphs
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