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Adversarial Multitask Learning for Technology Entity Recognition

机译:对抗性多任务学习技术实体识别

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When reading scholar papers, the first thing researchers want to know is which tasks and processes the papers describe, which materials they use, etc.In this paper, these concepts are referred as technology entities. Technology entity recognition (TER) is the basis for carrying out subsequent high-level technology analysis works, such as technical foresight, technology roadmap, and technological innovation. However, the challenges TER faces are much greater than that of normal named entity recognition (NER). Those challenges include the difficulty in feature extraction, the lack of annotation data, and the differences between different domains. To deal with the first challenge, we use a deep neural network to extract features from text. For the other two challenges, we propose an adversarial multitask learning method. The existing knowledge from a big dataset on a source domain is transferred to implement TER on a target domain with only a small number of labeled samples. The experiments show that the proposed method significantly outperforms comparison systems.
机译:在阅读学者论文时,研究人员首先要知道的是论文描述了哪些任务和过程,使用了哪些材料等等。在本文中,这些概念被称为技术实体。技术实体识别(TER)是进行后续高级技术分析工作(例如技术远见,技术路线图和技术创新)的基础。但是,TER面临的挑战比普通命名实体识别(NER)所面临的挑战要大得多。这些挑战包括特征提取困难,缺少注释数据以及不同域之间的差异。为了应对第一个挑战,我们使用深度神经网络从文本中提取特征。对于其他两个挑战,我们提出了一种对抗式多任务学习方法。来自源域中的大型数据集的现有知识将转移到仅具有少量标记样本的目标域中实现TER。实验表明,该方法明显优于比较系统。

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