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Supervised Learning Based Hypothesis Generation from Biomedical Literature

机译:基于生物医学文献的基于监督学习的假设生成

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摘要

Nowadays, the amount of biomedical literatures is growing at an explosive speed, and there is much useful knowledge undiscovered in this literature. Researchers can form biomedical hypotheses through mining these works. In this paper, we propose a supervised learning based approach to generate hypotheses from biomedical literature. This approach splits the traditional processing of hypothesis generation with classic ABC model into AB model and BC model which are constructed with supervised learning method. Compared with the concept cooccurrence and grammar engineering-based approaches like SemRep, machine learning based models usually can achieve better performance in information extraction (IE) from texts. Then through combining the two models, the approach reconstructs the ABC model and generates biomedical hypotheses from literature. The experimental results on the three classic Swanson hypotheses show that our approach outperforms SemRep system.
机译:如今,生物医学文献的数量正以爆炸性的速度增长,并且在这些文献中还发现了许多有用的知识。研究人员可以通过挖掘这些工作来形成生物医学假设。在本文中,我们提出了一种基于监督学习的方法来从生物医学文献中产生假设。该方法将经典ABC模型对假设生成的传统处理分为用监督学习方法构造的AB模型和BC模型。与基于概念的共现和基于语法工程的方法(如SemRep)相比,基于机器学习的模型通常可以在从文本中提取信息的过程中实现更好的性能。然后,通过结合这两个模型,该方法重建了ABC模型并从文献中得出了生物医学假设。对三个经典Swanson假设的实验结果表明,我们的方法优于SemRep系统。

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