Letter Sequence Labeling for Compound Splitting

Jianqiang Ma, Verena Henrich, E. Hinrichs
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引用次数: 13

Abstract

For languages such as German where compounds occur frequently and are written as single tokens, a wide variety of NLP applications benefits from recognizing and splitting compounds. As the traditional word frequency-based approach to compound splitting has several drawbacks, this paper introduces a letter sequence labeling approach, which can utilize rich word form features to build discriminative learning models that are optimized for splitting. Experiments show that the proposed method significantly outperforms state-of-the-art compound splitters.
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化合物拆分的字母序列标记
对于像德语这样经常出现复合词并被写成单个标记的语言,各种各样的NLP应用程序都受益于对复合词的识别和拆分。针对传统的基于词频的复合分词方法存在的诸多缺陷,本文提出了一种基于字母序列标注的方法,该方法利用丰富的词形特征来构建针对分词进行优化的判别学习模型。实验表明,该方法明显优于最先进的复合分离器。
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Colexifications for Bootstrapping Cross-lingual Datasets: The Case of Phonology, Concreteness, and Affectiveness KU-CST at the SIGMORPHON 2020 Task 2 on Unsupervised Morphological Paradigm Completion Linguist vs. Machine: Rapid Development of Finite-State Morphological Grammars Exploring Neural Architectures And Techniques For Typologically Diverse Morphological Inflection SIGMORPHON 2020 Task 0 System Description: ETH Zürich Team
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