Using Word Embeddings in Detection of Temporal Expressions in Turkish Texts

Ensar Emirali, M. Karsligil
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引用次数: 1

Abstract

Developing systems for automatically detection of date, time, duration and set expressions containing time information in texts is within the scope of Natural Language Processing research field. When studies for Turkish in the literature are reviewed, it is observed that only date and time expressions are included in the expressions detected by the models developed within the scope of Named Entity Recognition. There are studies to develop only rule-based systems on the subject of detection of temporal expressions in Turkish. Within the scope of this study, first Artificial Neural Networks based model for the detection of temporal expressions in Turkish texts is developed. The input of the developed model is word embeddings. In this study, the developed model success with using word embeddings built by different methods is measured on a dataset consisting of Turkish complaint texts collected from internet websites. By comparing the success of word embeddings on the detection of temporal expressions with the coverage percentages of word embeddings on the dataset, it is concluded that there is no correlation between them.
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用词嵌入技术检测土耳其语文本中的时态表达式
开发文本中日期、时间、持续时间和包含时间信息的集合表达式的自动检测系统,属于自然语言处理的研究领域。在回顾文献中对土耳其语的研究时,可以发现在命名实体识别范围内开发的模型检测到的表达式中只包含日期和时间表达式。有研究开发仅基于规则的系统来检测土耳其语的时间表达。在本研究的范围内,开发了第一个基于人工神经网络的模型,用于检测土耳其文本中的时间表达式。所开发模型的输入是词嵌入。在这项研究中,使用不同方法构建的词嵌入开发的模型的成功是在一个由从互联网网站收集的土耳其投诉文本组成的数据集上进行测量的。通过比较词嵌入在时间表达式检测上的成功率与词嵌入在数据集上的覆盖率,得出两者之间没有相关性的结论。
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