Word embedding and neural network on grammatical gender -- A case study of Swedish

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We analyze the information provided by the word embeddings about the grammatical gender in Swedish. We wish that this paper may serve as one of the bridges to connect the methods of computational linguistics and general linguistics. Taking nominal classification in Swedish as a case study, we first show how the information about grammatical gender in language can be captured by word embedding models and artificial neural networks. Then, we match our results with previous linguistic hypotheses on assignment and usage of grammatical gender in Swedish and analyze the errors made by the computational model from a linguistic perspective.
Original languageUndefined/Unknown
Publication statusPublished - 28 Jul 2020
Externally publishedYes

Bibliographical note

The paper was submitted to Nordic Journal of Linguistics in 2017

ID: 366049060