2023
DOI: 10.31234/osf.io/u6sv4
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Linear Discriminative Learning: a competitive non-neural baseline for morphological inflection

Abstract: This paper presents our submission to the SIGMORPHON 2023 task 2 of Cognitively Plausible Morphophonological Generalization in Korean. We implemented both Linear Discriminative Learning and Transformer models and found that the Linear Discriminative Learning model trained on a combination of corpus and experimental data showed the best performance with the overall accuracy of around 83%. We found that the best model must be trained onboth corpus data and the experimental data of one particular participant. Our… Show more

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