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Evaluating Joint Modeling of Yeast Biology Literature and Protein-Protein Interaction Networks

机译:评估酵母生物学文献和蛋白质-蛋白质相互作用网络的联合建模

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Block-LDA is a topic modeling approach to perform data fusion between entity-annotated text documents and graphs with entity-entity links. We evaluate Block-LDA in the yeast biology domain by jointly modeling PubMed~® articles and yeast protein-protein interaction networks. The topic coherence of the emergent topics and the ability of the model to retrieve relevant scientific articles and proteins related to the topic are compared to that of a text-only approach that does not make use of the protein-protein interaction matrix. Evaluation of the results by biologists show that the joint modeling results in better topic coherence and improves retrieval performance in the task of identifying top related papers and proteins.
机译:Block-LDA是一种主题建模方法,用于在带有实体实体链接的带有实体注释的文本文档和图形之间执行数据融合。我们通过共同建模PubMed〜®文章和酵母蛋白质-蛋白质相互作用网络来评估酵母生物学领域中的Block-LDA。将新兴主题的主题连贯性和模型检索与该主题相关的相关科学文章和蛋白质的能力与未使用蛋白质-蛋白质相互作用矩阵的纯文本方法进行了比较。生物学家对结果的评估表明,在确定最重要的相关论文和蛋白质的任务中,联合建模可提高主题的连贯性并提高检索性能。

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