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May I Check Again? — A simple but efficient way to generate and use contextual dictionaries for Named Entity Recognition. Application to French Legal Texts

机译:我可以再次检查吗? - 一种简单但有效的方法来生成和使用用于命名实体识别的上下文词典。申请法国法律文本

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摘要

In this paper we present a new method to learn a model robust to typos for a Named Entity Recognition task. Our improvement over existing methods helps the model to take into account the context of the sentence inside a court decision in order to recognize an entity with a typo. We used state-of-the-art models and enriched the last layer of the neural network with high-level information linked with the potential of the word to be a certain type of entity. More precisely, we utilized the similarities between the word and the potential entity candidates in the tagged sentence context. The experiments on a dataset of French court decisions show a reduction of the relative F1-score error of 32%, upgrading the score obtained with the most competitive fine-tuned state-of-the-art system from 94.85% to 96.52%.
机译:在本文中,我们提出了一种新方法,用于了解名为Entity识别任务的模型鲁棒窗体。我们对现有方法的改进有助于模型考虑法院决定内的句子的背景,以便与拼写错误识别实体。我们使用最先进的模型,并通过链接的高级信息来丰富了神经网络的最后一层,其中包含了一定类型的实体。更确切地说,我们在标记的句子上下文中使用了单词和潜在实体候选之间的相似性。法国法院决定数据集的实验表明,减少了32%的相对F1分数误差,升级了最有竞争力的微调最先进系统的分数,从94.85%到96.52%。

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