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Bacteria and Biotope Entity Recognition Using A Dictionary-Enhanced Neural Network Model

机译:使用字典增强神经网络模型的细菌和生物群落实体识别

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Automatic recognition of biomedical entities in text is the crucial initial step in biomedical text mining. In this paper, we investigate employing modern neural network models for recognizing biomedical entities. To compensate for the small amount of training data in biomedical domain, we propose to integrate dictionaries into the neural model. Our experiments on BB3 data sets demonstrate that state-of-the-art neural network model is promising in recognizing biomedical entities even with very little training data. When integrated with dictionaries, its performance could be greatly improved, achieving the competitive performance compared with the best dictionary-based system on the entities with specific terminology, and much higher performance on the entities with more general terminology.
机译:文本中生物医学实体的自动识别是生物医学文本挖掘中至关重要的初始步骤。在本文中,我们研究了采用现代神经网络模型来识别生物医学实体。为了弥补生物医学领域中少量的训练数据,我们建议将字典集成到神经模型中。我们在BB3数据集上的实验表明,即使只有很少的训练数据,最新的神经网络模型也有望在识别生物医学实体中发挥作用。与词典集成后,与具有最佳术语的实体(具有特定术语的实体)相比,与基于字典的最佳系统相比,它的性能可以得到极大的提高,在具有更通用术语的实体上具有更高的性能。

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