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NCHLT Tshivenḓa fastText-CBoW embeddings
Static word and subword embeddings for the continuous bag of words (CBoW) flavour of the fastText architecture (Bojanowski et al., 2017). The embedding provides real-valued vector representations for Tshivenḓa text.
Roald Eiselen
Roald.Eiselen@nwu.ac.za
North-West University; Centre for Text Technology (CTexT)
Creative Commons Attribution 4.0 International (CC-BY 4.0)
Tshivenḓa
Roald Eiselen
Rico Koen; Albertus Kruger; Jacques van Heerden
https://hdl.handle.net/20.500.12185/593
Text
Modules
String embeddings
Training data: Paragraphs: 304,248; Token count: 7,363,713; Vocab size: 27,037; Embedding dimensions: 600;
1.14GB (Zipped)
NCHLT Text IV
Python
Web; Government Documents
ve
2023-07-28T08:02:42Z; 2023-05-01
2023-07-28T08:02:42Z; 2023-05-01
2023-05-01


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  • Resource Catalogue [349]
    A collection of language resources available for download from the RMA of SADiLaR. The collection mostly consists of resources developed with funding from the Department of Arts and Culture.

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