基于检索相关样本的特定领域NER

Xin Zhang, Yong Jiang, Xiaobin Wang, Xuming Hu, Yueheng Sun, Pengjun Xie, Meishan Zhang
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引用次数: 10

摘要

成功的基于机器学习的命名实体识别模型可能会在一些特殊领域的文本上失败,例如中文地址和电子商务标题,这些领域需要足够的背景知识。这样的文本对人类注释者来说也很困难。事实上,我们可以从具有共同实体的相关文本中获得一些潜在的有用信息,以帮助文本理解。然后,人们可以很容易地通过参考相关样本推断出正确的答案。在本文中,我们建议用相关样本来增强NER模型。利用稀疏BM25检索器从大规模域内未标记数据中提取相关样本。为了明确地模拟人类的推理过程,我们通过多数投票执行了一个无需训练的实体类型校准。为了在训练阶段捕获相关特征,我们建议使用基于变压器的多实例交叉编码器对相关样本进行建模。在上述两个领域的数据集上的实证结果表明了我们的方法的有效性。
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Domain-Specific NER via Retrieving Correlated Samples
Successful Machine Learning based Named Entity Recognition models could fail on texts from some special domains, for instance, Chinese addresses and e-commerce titles, where requires adequate background knowledge. Such texts are also difficult for human annotators. In fact, we can obtain some potentially helpful information from correlated texts, which have some common entities, to help the text understanding. Then, one can easily reason out the correct answer by referencing correlated samples. In this paper, we suggest enhancing NER models with correlated samples. We draw correlated samples by the sparse BM25 retriever from large-scale in-domain unlabeled data. To explicitly simulate the human reasoning process, we perform a training-free entity type calibrating by majority voting. To capture correlation features in the training stage, we suggest to model correlated samples by the transformer-based multi-instance cross-encoder. Empirical results on datasets of the above two domains show the efficacy of our methods.
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