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首页> 外文期刊>International journal of data mining and bioinformatics >Mining literatures to discover novel multiple biological associations in a disease context
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Mining literatures to discover novel multiple biological associations in a disease context

机译:挖掘文献以发现疾病背景下的新型多种生物学关联

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摘要

The text mining methods proposed to discover associations between pairs of biological entities by mining a scientific literature often extract associations already existing in the literature, whereas their extensions supervise too much the discovery process with heuristics and ontologies that limit the research space. On the other hand, the methods that search novel associations applying the text mining methods to two literatures do not avoid the risk of discovering syllogisms based on faulty premises. For this reason, the paper proposes a method that helps the users to discover associations among biological entities by mining the literature using an unsupervised clustering approach. The discovered multiple associations are derived from binary associations to limit the computational load without compromising the methodology accuracy. A case study demonstrates how the tool derived from the methodology works in practice. A comparison between this tool and other tools available in the literature points out the methodology effectiveness.
机译:提议通过挖掘科学文献来发现生物实体对之间的关​​联的文本挖掘方法通常会提取文献中已经存在的关联,而它们的扩展过多地限制了探索空间的启发式和本体论监督发现过程。另一方面,将文本挖掘方法应用于两个文献的新颖小说搜索方法无法避免基于错误前提的发现三段论的风险。为此,本文提出了一种方法,该方法可通过使用无监督聚类方法挖掘文献来帮助用户发现生物实体之间的关联。发现的多个关联是从二进制关联中派生出来的,以在不影响方法精度的情况下限制计算量。案例研究说明了从方法论中衍生的工具如何在实践中起作用。该工具与文献中提供的其他工具之间的比较指出了该方法的有效性。

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