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Indonesian Named-entity Recognition for 15 Classes Using Ensemble Supervised Learning

机译:使用集成监督学习的15个班级的印尼命名实体识别

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Here, we describe our effort in building Indonesian Named Entity Recognition (NER) for newspaper article with 15 classes which is larger number of class type compared to existing Indonesian NER. We employed supervised machine learning in the NER and conducted experiments to find the best attribute combination and the best algorithm with highest accuracy. We compared the attribute of word level, sentence level and document level. In the algorithm, we compared several single machine learning algorithms and also an ensembled one. Using 457 news articles, the best accuracy was achieved by using ensemble technique where the result of several machine learning algorithms were used as the feature for one machine learning algorithm.
机译:在这里,我们描述了我们为15种类别的报纸文章建立印度尼西亚命名实体识别(NER)的努力,与现有的印度尼西亚NER相比,该类别的数量更多。我们在NER中采用了监督式机器学习,并进行了实验,以找到具有最高准确性的最佳属性组合和最佳算法。我们比较了单词级别,句子级别和文档级别的属性。在该算法中,我们比较了几种单机学习算法和一种集成算法。使用457条新闻,使用集成技术可实现最佳准确性,该集成技术将几种机器学习算法的结果用作一种机器学习算法的功能。

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