Word Embeddings for Morphologically Complex Languages
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RIS BIB ENDNOTEWord Embeddings for Morphologically Complex Languages
Publication date: 24.03.2017
Schedae Informaticae, 2016, Volume 25, pp. 127 - 138
https://doi.org/10.4467/20838476SI.16.010.6191Authors
Word Embeddings for Morphologically Complex Languages
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Information: Schedae Informaticae, 2016, Volume 25, pp. 127 - 138
Article type: Original article
Titles:
Word Embeddings for Morphologically Complex Languages
Word Embeddings for Morphologically Complex Languages
Faculty of Mathematics and Computer Science, Jagiellonian University, Krakow, Poland
Published at: 24.03.2017
Article status: Open
Licence: None
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