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Named Entity Recognition for the Indonesian Language: Combining Contextual, Morphological and Part-of-Speech Features into a Knowledge Engineering Approach

机译:为印度尼西亚语的命名实体识别:将上下文,形态和言语部分结合成知识工程方法

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We present a novel named entity recognition approach for the Indonesian language. We call the new method InNER for Indonesian Named Entity Recognition. InNER is based on a set of rules capturing the contextual, morphological, and part of speech knowledge necessary in the process of recognizing named entities in Indonesian texts. The InNER strategy is one of knowledge engineering: the domain and language specific rules are designed by expert knowledge engineers. After showing in our previous work that mined association rules can effectively recognize named entities and outperform maximum entropy methods, we needed to evaluate the potential for improvement to the rule based approach when expert crafted knowledge is used. The results are conclusive: the InNER method yields recall and precision of up to 63.43% and 71.84%, respectively. Thus, it significantly outperforms not only maximum entropy methods but also the association rule based method we had previously designed.
机译:我们为印度尼西亚语言提出了一种名为实体识别方法。我们称之为印度尼西亚名为实体识别的新方法。内在是基于一组规则,捕获了在印度尼西亚文本中识别命名实体的过程中所需的语境,形态和部分语音知识。内部战略是知识工程之一:域和语言特定规则是由专家知识工程师设计的。在我们以前的工作中显示开采的关联规则可以有效地认识到命名实体和优于最大熵方法,我们需要在使用专业制作知识时,评估基于规则的方法的改进潜力。结果是确凿的:内部方法分别产生召回和精度高达63.43%和71.84%。因此,它不仅优于最大熵方法,而且显着优于我们先前设计的基于关联规则的方法。

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