Evolutional Dependency Parse Trees for Biological Relation Extraction

Hung-Yu kao, Yi-Tsung Tang, Jian-Fu Wang
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引用次数: 1

Abstract

Due to the rapid growth in biological technology, the development of high-quality information extraction systems is needed and still remains a challenge. Several recently proposed approaches to biological relation extraction are based on machine learning techniques on lexical and syntactic information. Most use the dependency path between two genes/proteins instead of the whole dependency tree of a sentence for identifying relationships. However, the dependency path may not have any node between two entities. If a limited set of annotated training corpora is used for the construction of tree information of biological relationships, the training corpus will lack some sentence structures and cannot predict whether the sentence has a biological relationship. In this paper, we developed a biological relation extraction system called Evolutional Tree Extraction System ¨C ETree. We extended the dependency path to the dependency subtree and developed a method that can automatically expand and prune these existing dependency subtrees into various dependency subtrees. These dependency subtrees are called ¨DEvolutional Trees¡¬ and are used to predict the biological relationship sentences.
生物关系提取的进化依赖解析树
由于生物技术的快速发展,需要开发高质量的信息提取系统,这仍然是一个挑战。最近提出的几种生物关系提取方法是基于词汇和句法信息的机器学习技术。大多数使用两个基因/蛋白质之间的依赖路径,而不是一个句子的整个依赖树来识别关系。但是,依赖路径在两个实体之间可能没有任何节点。如果使用一组有限的带注释的训练语料库来构建生物关系的树状信息,训练语料库会缺少一些句子结构,无法预测句子是否具有生物关系。在本文中,我们开发了一个生物关系提取系统,称为进化树提取系统¨ETree。我们将依赖路径扩展到依赖子树,并开发了一种方法,可以自动地将这些现有的依赖子树扩展和修剪为各种依赖子树。这些依赖子树被称为“进化树”,用于预测生物关系句子。
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