首页> 外文会议>Data Mining Workshops, ICDMW, 2008 IEEE International Conference on >Ontology-Based Protein-Protein Interactions Extraction from Literature Using the Hidden Vector State Model
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Ontology-Based Protein-Protein Interactions Extraction from Literature Using the Hidden Vector State Model

机译:使用隐藏的向量状态模型从文献中提取基于本体的蛋白质-蛋白质相互作用

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This paper proposes a novel framework of incorporating protein-protein interactions (PPI) ontology knowledge into PPI extraction from biomedical literature in order to address the emerging challenges of deep natural language understanding. It is built upon the existing work on relation extraction using the Hidden Vector State (HVS) model. The HVS model belongs to the category of statistical learning methods. It can be trained directly from un-annotated data in a constrained way whilst at the same time being able to capture the underlying named entity relationships. However, it is difficult to incorporate background knowledge or non-local information into the HVS model. This paper proposes to represent the HVS model as a conditionally trained undirected graphical model in which non-local features derived from PPI ontology through inference would be easily incorporated. The seamless fusion of ontology inference with statistical learning produces a new paradigm to information extraction.
机译:本文提出了一个新的框架,该框架将蛋白质-蛋白质相互作用(PPI)本体论知识整合到生物医学文献的PPI提取中,以应对深刻的自然语言理解的新兴挑战。它建立在使用隐藏矢量状态(HVS)模型进行关系提取的现有工作的基础上。 HVS模型属于统计学习方法的类别。可以直接从未注释的数据中以受约束的方式对其进行训练,同时能够捕获基础的命名实体关系。但是,很难将背景知识或非本地信息合并到HVS模型中。本文提出将HVS模型表示为有条件训练的无向图形模型,在该模型中,可以容易地合并通过推理从PPI本体派生的非局部特征。本体推理与统计学习的无缝融合为信息提取提供了新的范例。

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