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arxiv 2305.15637 v1 pith:HYH3GX2O submitted 2023-05-25 cs.CL

Morphological Inflection: A Reality Check

classification cs.CL
keywords datahighinflectionperformanceevaluationlanguagesmorphologicalstrategies
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Morphological inflection is a popular task in sub-word NLP with both practical and cognitive applications. For years now, state-of-the-art systems have reported high, but also highly variable, performance across data sets and languages. We investigate the causes of this high performance and high variability; we find several aspects of data set creation and evaluation which systematically inflate performance and obfuscate differences between languages. To improve generalizability and reliability of results, we propose new data sampling and evaluation strategies that better reflect likely use-cases. Using these new strategies, we make new observations on the generalization abilities of current inflection systems.

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