Unsupervised Paradigm Clustering Using Transformation Rules

Changbing Yang, Garrett Nicolai, Miikka Silfverberg
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引用次数: 2

Abstract

This paper describes the submission of the CU-UBC team for the SIGMORPHON 2021 Shared Task 2: Unsupervised morphological paradigm clustering. Our system generates paradigms using morphological transformation rules which are discovered from raw data. We experiment with two methods for discovering rules. Our first approach generates prefix and suffix transformations between similar strings. Secondly, we experiment with more general rules which can apply transformations inside the input strings in addition to prefix and suffix transformations. We find that the best overall performance is delivered by prefix and suffix rules but more general transformation rules perform better for languages with templatic morphology and very high morpheme-to-word ratios.
使用转换规则的无监督范式聚类
本文描述了CU-UBC团队提交的SIGMORPHON 2021共享任务2:无监督形态范式聚类。我们的系统使用从原始数据中发现的形态转换规则生成范式。我们试验了两种发现规则的方法。我们的第一种方法生成相似字符串之间的前缀和后缀转换。其次,我们尝试了更通用的规则,除了前缀和后缀转换之外,还可以在输入字符串中应用转换。我们发现前缀和后缀规则提供了最好的整体性能,但更一般的转换规则在模板形态和非常高的语素-词比率的语言中表现更好。
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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