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Person Entity Recognition for the Indonesian Qur’an Translation with the Approach Hidden Markov Model-Viterbi

机译:隐马尔可夫模型-维特比方法对印度尼西亚古兰经翻译的人实体识别

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Qur’an contains teachings about life given by Allah to the Prophet Muhammad. In the Qur’an, there are a lot of verses. With a large number of verses, it will be very difficult and take a long time for us to find a name. Manually searching for entities will be very difficult and take a long time to be searched. With NER, which is one of the techniques of information extraction that aims to detect entity names, such as people’s names, locations, events, and time expected search for entity names in the Qur’an will significantly simplify and shorten the time. Indonesian Qur’an translations will later be used as Inputs, and their names are entity names. The solution to the problem above is to use NER. The Named Entity (NE) Recognition (NER) system will look for name entities people from the corpus that have been created. In applying NER requires a model to detect name entities in a text. Hidden Markov Model-Viterbi is a machine learning algorithm type Supervised Learning which will be applied. In the development of a system for searching names entities for the Indonesian translation of the Qur’an dataset have best F1 results is 76%.
机译:古兰经包含真主赋予先知穆罕默德的生命教义。在古兰经中有很多经文。由于有大量的经文,我们很难找到名字并且要花费很长时间。手动搜索实体将非常困难,并且需要很长时间进行搜索。 NER是一种信息提取技术,旨在检测实体名称,例如人物的姓名,位置,事件和预期时间,在古兰经中搜索实体名称将大大简化和缩短时间。印度尼西亚的古兰经翻译将在以后用作输入,它们的名称是实体名称。解决上述问题的方法是使用NER。命名实体(NE)识别(NER)系统将从已创建的语料库中查找命名实体人。在应用NER时需要一个模型来检测文本中的名称实体。隐马尔可夫模型-维特比是一种将应用的机器学习算法类型“监督学习”。在开发用于搜索名称实体以进行古兰经数据集的印尼语翻译的系统时,F1的最佳结果是76%。

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