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Employing Auto-annotated Data for Person Name Recognition in Judgment Documents

机译:在判断文档中使用自动注释的数据进行人名识别

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In the last decades, named entity recognition has been extensively studied with various supervised learning approaches depend on massive labeled data. In this paper, we focus on person name recognition in judgment documents. Owing to the lack of human-annotated data, we propose a joint learning approach, namely Aux-LSTM, to use a large scale of auto-annotated data to help human-annotated data (in a small size) for person name recognition. Specifically, our approach first develops an auxiliary Long Short-Term Memory (LSTM) representation by training the auto-annotated data and then leverages the auxiliary LSTM representation to boost the performance of classifier trained on the human-annotated data. Empirical studies demonstrate the effectiveness of our proposed approach to person name recognition in judgment documents with both human-annotated and auto-annotated data.
机译:在过去的几十年中,已使用各种依赖大量标记数据的监督学习方法对命名实体识别进行了广泛的研究。在本文中,我们将重点放在判决文件中的人名识别上。由于缺少人工注释的数据,我们提出了一种联合学习方法,即Aux-LSTM,它使用大量的自动注释数据来帮助(小尺寸)人工注释数据进行人名识别。具体来说,我们的方法首先通过训练自动注释的数据来开发辅助的长期短期记忆(LSTM)表示,然后利用辅助的LSTM表示来提高在人工注释的数据上训练的分类器的性能。实证研究表明,在带有人类注释和自动注释数据的判断文档中,我们提出的人名识别方法是有效的。

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