Active Learning Yields Better Training Data for Scientific Named Entity Recognition

Roselyne B. Tchoua, Aswathy Ajith, Zhi Hong, Logan T. Ward, K. Chard, Debra J. Audus, Shrayesh Patel, Juan J. de Pablo, Ian T Foster
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引用次数: 12

Abstract

Despite significant progress in natural language processing, machine learning models require substantial expertannotated training data to perform well in tasks such as named entity recognition (NER) and entity relations extraction. Furthermore, NER is often more complicated when working with scientific text. For example, in polymer science, chemical structure may be encoded using nonstandard naming conventions, the same concept can be expressed using many different terms (synonymy), and authors may refer to polymers with ad-hoc labels. These challenges, which are not unique to polymer science, make it difficult to generate training data, as specialized skills are needed to label text correctly. We have previously designed polyNER, a semi-automated system for efficient identification of scientific entities in text. PolyNER applies word embedding models to generate entity-rich corpora for productive expert labeling, and then uses the resulting labeled data to bootstrap a context-based classifier. PolyNER facilitates a labeling process that is otherwise tedious and expensive. Here, we use active learning to efficiently obtain more annotations from experts and improve performance. Our approach requires just five hours of expert time to achieve discrimination capacity comparable to that of a state-of-the-art chemical NER toolkit.
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主动学习为科学命名实体识别提供更好的训练数据
尽管在自然语言处理方面取得了重大进展,但机器学习模型需要大量专业的训练数据才能在命名实体识别(NER)和实体关系提取等任务中表现良好。此外,在处理科学文本时,NER通常更复杂。例如,在聚合物科学中,化学结构可能使用非标准的命名约定进行编码,相同的概念可以使用许多不同的术语(同义词)来表达,作者可以使用特殊的标签来引用聚合物。这些挑战并不是聚合物科学所独有的,它们使得生成训练数据变得困难,因为正确标记文本需要专门的技能。我们之前设计了polyNER,这是一种半自动系统,用于有效识别文本中的科学实体。PolyNER应用词嵌入模型来生成实体丰富的语料库,用于高效的专家标记,然后使用结果标记数据来引导基于上下文的分类器。PolyNER促进了标签过程,否则是繁琐和昂贵的。在这里,我们使用主动学习来有效地从专家那里获得更多的注释并提高性能。我们的方法只需要5个小时的专家时间就能实现与最先进的化学NER工具包相当的识别能力。
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