Leveraging Principal Parts for Morphological Inflection

L. Liu, Mans Hulden
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引用次数: 13

Abstract

This paper presents the submission by the CU Ling team from the University of Colorado to SIGMORPHON 2020 shared task 0 on morphological inflection. The task is to generate the target inflected word form given a lemma form and a target morphosyntactic description. Our system uses the Transformer architecture. Our overall approach is to treat the morphological inflection task as a paradigm cell filling problem and to design the system to leverage principal parts information for better morphological inflection when the training data is limited. We train one model for each language separately without external data. The overall average performance of our submission ranks the first in both average accuracy and Levenshtein distance from the gold inflection among all submissions including those using external resources.
利用主成分进行形态变化
本文介绍了科罗拉多大学的CU Ling团队向SIGMORPHON 2020提交的关于形态变化的共享任务0。任务是在给定引理形式和目标形态句法描述的情况下生成目标屈折词形。我们的系统使用Transformer架构。我们的总体方法是将形态学变形任务视为范式细胞填充问题,并设计系统在训练数据有限的情况下利用主成分信息进行更好的形态学变形。我们在没有外部数据的情况下为每种语言单独训练一个模型。我们提交的整体平均表现在所有提交(包括使用外部资源的提交)中,无论是平均准确率还是与黄金拐点的Levenshtein距离都排名第一。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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