评估序列比对学习屈折形态

David L. King
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引用次数: 6

摘要

这项工作研究了基于crf的序列比对模型,用于学习自然语言形态学。尽管这些系统在有限数量的语言中表现良好,但作为SIGMORPHON 2016共享任务的一部分,这项工作特别着手确定这些模型是否能像以前的工作那样处理非连接形态学。然而,结果表明,强烈倾向于简单的,连接的形态系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluating Sequence Alignment for Learning Inflectional Morphology
This work examines CRF-based sequence alignment models for learning natural language morphology. Although these systems have performed well for a limited number of languages, this work, as part of the SIGMORPHON 2016 shared task, specifically sets out to determine whether these models handle non-concatenative morphology as well as previous work might suggest. Results, however, indicate a strong preference for simpler, concatenative morphological systems.
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