Neural and Linear Pipeline Approaches to Cross-lingual Morphological Analysis

Çagri Çöltekin, Jeremy Barnes
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引用次数: 3

Abstract

This paper describes Tübingen-Oslo team’s participation in the cross-lingual morphological analysis task in the VarDial 2019 evaluation campaign. We participated in the shared task with a standard neural network model. Our model achieved analysis F1-scores of 31.48 and 23.67 on test languages Karachay-Balkar (Turkic) and Sardinian (Romance) respectively. The scores are comparable to the scores obtained by the other participants in both language families, and the analysis score on the Romance data set was also the best result obtained in the shared task. Besides describing the system used in our shared task participation, we describe another, simpler, model based on linear classifiers, and present further analyses using both models. Our analyses, besides revealing some of the difficult cases, also confirm that the usefulness of a source language in this task is highly correlated with the similarity of source and target languages.
跨语言形态分析的神经和线性管道方法
本文描述了宾根-奥斯陆团队在VarDial 2019评估活动中参与跨语言形态分析任务。我们用一个标准的神经网络模型参与了共享任务。我们的模型在测试语言卡拉恰伊-巴尔卡尔语(突厥语)和撒丁语(罗曼语)上分别获得了31.48分和23.67分的分析f1分。该分数与两个语系的其他参与者的分数相当,并且罗曼语数据集的分析分数也是在共享任务中获得的最佳结果。除了描述共享任务参与中使用的系统外,我们还描述了另一个更简单的基于线性分类器的模型,并使用这两个模型进行了进一步的分析。我们的分析除了揭示了一些困难的案例外,还证实了源语言在这项任务中的有用性与源语言和目标语言的相似性高度相关。
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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