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Kannada Named Entity Recognition and Classification using Bidirectional Long Short-Term Memory Networks

机译:卡纳达语使用双向长短期记忆网络命名实体识别和分类

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This paper focuses on carrying out the Named Entity Recognition and Classification (NERC) task on Kannada, a major Dravidian language spoken in India. Low resource conditions such as absence of external linguistic resources and gazetteers in Kannada and other Dravidian languages pose obstacles to the NERC task. LSTM networks, with their capability of learning long-term dependencies, present an effective solution to this task without the need of a deeper understanding of the semantics of the language. This paper describes a novel supervised machine learning model for Kannada NERC using Bidirectional LSTM networks. The network model is trained and validated on a manually annotated corpus, and gives encouraging results in terms of various evaluation metrics.
机译:本文着重于对印度语中主要的德拉维语Kannada进行命名实体识别和分类(NERC)任务。资源匮乏的条件,例如缺少外部语言资源和卡纳达语和其他德拉维语的地名词典,对NERC任务构成了障碍。 LSTM网络具有学习长期依存关系的能力,可以提供一种有效的解决方案,而无需更深入地了解语言的语义。本文使用双向LSTM网络描述了一种适用于Kannada NERC的新型监督式机器学习模型。该网络模型在人工注释的语料库上进行了训练和验证,并根据各种评估指标给出了令人鼓舞的结果。

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