Machine Reading for Extraction of Bacteria and Habitat Taxonomies.

Parisa Kordjamshidi, Wouter Massa, Thomas Provoost, Marie-Francine Moens
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引用次数: 3

Abstract

There is a vast amount of scientific literature available from various resources such as the internet. Automating the extraction of knowledge from these resources is very helpful for biologists to easily access this information. This paper presents a system to extract the bacteria and their habitats, as well as the relations between them. We investigate to what extent current techniques are suited for this task and test a variety of models in this regard. We detect entities in a biological text and map the habitats into a given taxonomy. Our model uses a linear chain Conditional Random Field (CRF). For the prediction of relations between the entities, a model based on logistic regression is built. Designing a system upon these techniques, we explore several improvements for both the generation and selection of good candidates. One contribution to this lies in the extended exibility of our ontology mapper that uses an advanced boundary detection and assigns the taxonomy elements to the detected habitats. Furthermore, we discover value in the combination of several distinct candidate generation rules. Using these techniques, we show results that are significantly improving upon the state of art for the BioNLP Bacteria Biotopes task.

Abstract Image

细菌和生境分类提取的机器阅读。
有大量的科学文献可以从互联网等各种资源中获得。从这些资源中自动提取知识对生物学家轻松访问这些信息非常有帮助。本文介绍了一种提取细菌及其栖息地的系统,以及它们之间的关系。我们调查了目前的技术在多大程度上适合于这项任务,并在这方面测试了各种模型。我们检测生物文本中的实体,并将栖息地映射到给定的分类中。我们的模型使用线性链条件随机场(CRF)。为了预测实体之间的关系,建立了基于逻辑回归的模型。在这些技术的基础上设计了一个系统,我们探索了一些关于生成和选择优秀候选人的改进。对此的一个贡献在于我们的本体映射器的扩展灵活性,它使用高级边界检测并将分类元素分配给检测到的栖息地。此外,我们发现了几个不同的候选生成规则组合的价值。使用这些技术,我们展示的结果显着改善了BioNLP细菌生物群任务的艺术状态。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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