荷兰语推文的可变性。对偏差词标记的比例的估计

H. V. Halteren, N. Oostdijk
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引用次数: 5

摘要

在本文中,我们试图估计荷兰语推文中有多少比例的词令牌没有被标准资源覆盖,因此可能会对标准NLP应用程序造成问题。我们完全注释和分析了一个小的试点语料库。我们还使用语料库校准非单词标记和词汇外单词比例的自动估计程序,之后我们将这些程序应用于大约20亿条荷兰语推文。我们发现可能有问题的标记的比例如此之高(例如,在整个tweet集合中估计有15%的单词是有问题的,并且带有死亡威胁相关tweet的注释样本在四分之三的tweet中显示有问题的单词),任何为标准荷兰语设计/创建的NLP应用程序都可能在其处理中受到严重阻碍。我们提出了几种方法来缓解这个问题,但没有一种能彻底解决问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Variability in Dutch Tweets. An estimate of the proportion of deviant word tokens
In this paper, we attempt to estimate which proportion of the word tokens in Dutch tweets are not covered by standard resources and can therefore be expected to cause problems for standard NLP applications. We fully annotated and analysed a small pilot corpus. We also used the corpus to calibrate automatic estimation procedures for proportions of non-word tokens and of out-of-vocabulary words, after which we applied these procedures to about 2 billion Dutch tweets. We find that the proportion of possibly problematic tokens is so high (e.g. an estimate of 15% of the words being problematic in the full tweet collection, and the annotated sample with death-threat-related tweets showing problematic words in three out of four tweets) that any NLP application designed/created for standard Dutch can be expected to be seriously hampered in its processing. We suggest a few approaches to alleviate the problem, but none of them will solve the problem completely.
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