Kateřina Pelegrinová
2022
The SIGMORPHON 2022 Shared Task on Morpheme Segmentation
Khuyagbaatar Batsuren
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Gábor Bella
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Aryaman Arora
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Viktor Martinovic
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Kyle Gorman
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Zdeněk Žabokrtský
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Amarsanaa Ganbold
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Šárka Dohnalová
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Magda Ševčíková
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Kateřina Pelegrinová
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Fausto Giunchiglia
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Ryan Cotterell
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Ekaterina Vylomova
Proceedings of the 19th SIGMORPHON Workshop on Computational Research in Phonetics, Phonology, and Morphology
The SIGMORPHON 2022 shared task on morpheme segmentation challenged systems to decompose a word into a sequence of morphemes and covered most types of morphology: compounds, derivations, and inflections. Subtask 1, word-level morpheme segmentation, covered 5 million words in 9 languages (Czech, English, Spanish, Hungarian, French, Italian, Russian, Latin, Mongolian) and received 13 system submissions from 7 teams and the best system averaged 97.29% F1 score across all languages, ranging English (93.84%) to Latin (99.38%). Subtask 2, sentence-level morpheme segmentation, covered 18,735 sentences in 3 languages (Czech, English, Mongolian), received 10 system submissions from 3 teams, and the best systems outperformed all three state-of-the-art subword tokenization methods (BPE, ULM, Morfessor2) by 30.71% absolute. To facilitate error analysis and support any type of future studies, we released all system predictions, the evaluation script, and all gold standard datasets.
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