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News/Neural Recovery of Historical Lexical Structure in Bantu Languages from Modern Data
arxiv
PublishedApril 27, 2026 at 4:00 AM
—neutral

Neural Recovery of Historical Lexical Structure in Bantu Languages from Modern Data

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arxiv.orgfull article ↗
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Publisher summary· verbatim

arXiv:2604.22730v1 Announce Type: cross Abstract: We investigate whether neural models trained exclusively on modern morphological data can recover cross-lingual lexical structure consistent with historical reconstruction. Using BantuMorph v7, a transformer over Bantu morphological paradigms, we ana

Models mentioned
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  • 01meta logo
    nllb-600m
    meta/nllb-600m
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Mentioned models
02
  • 01
    BantuMorph
  • 02
    nllb-600m
    meta/nllb-600m
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arxiv
Read original ↗All from arxiv →
Tags
04
#machine learning#natural language processing#language reconstruction#historical linguistics

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Mentioned models
02
  • 01
    BantuMorph
  • 02
    nllb-600m
    meta/nllb-600m
Source
↗
arxiv
Read original ↗All from arxiv →
Tags
04
#machine learning#natural language processing#language reconstruction#historical linguistics

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