构建Laz的形态分析器

Esra Onal, Francis M. Tyers
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引用次数: 1

摘要

拉兹语是南高加索语系的一种语言,主要分布在土耳其东北海岸,是一种濒危语言,本研究旨在为拉兹语的记录和复兴工作做出贡献。通过使用赫尔辛基有限状态工具包(HFST)构建基于规则的词形分析器,它构成了为Laz创建词形识别和生成的通用计算模型的第一步。评估结果表明,该分析器对为本研究收集的包含111,365个令牌的语料库的覆盖率为64.9%。我们还从语料库中随机选择了100个未被分析器覆盖的标记进行了错误分析,结果表明错误主要是由于语料库中的土耳其语单词和词典中缺失的词干造成的。
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Building a Morphological Analyser for Laz
This study is an attempt to contribute to documentation and revitalization efforts of endangered Laz language, a member of South Caucasian language family mainly spoken on northeastern coastline of Turkey. It constitutes the first steps to create a general computational model for word form recognition and production for Laz by building a rule-based morphological analyser using Helsinki Finite-State Toolkit (HFST). The evaluation results show that the analyser has a 64.9% coverage over a corpus collected for this study with 111,365 tokens. We have also performed an error analysis on randomly selected 100 tokens from the corpus which are not covered by the analyser, and these results show that the errors mostly result from Turkish words in the corpus and missing stems in our lexicon.
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