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Topic segmentation model based on ATNLDA and co-occurrence theory and its application in stem cell field

机译:基于ATNLDA和共现理论的主题分割模型及其在干细胞领域中的应用

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This paper describes the application of co-occurrence and latent Dirichlet allocation (LDA)-based topic analyses in stem cell-related literature research. On account of the deficiency of parameter estimation in LDA, this study integrated co-occurrence theory and clustering judgement indicators and constructed an ATNLDA (Auto Topic Number LDA) model for topic segmentation. Next, ATNLDA was used to determine the optimal topic number of stem cell research literatures from 2006 to 2011 in PubMed, which was then used for topic segmentation of research content in stem cell data set After stem cell research topics were obtained, they were analysed in terms of topic label, topic research content and interrelation between topics. The results verified that application of ATNLDA in topic segmentation in stem cell literature research is effective and feasible. Current deficiencies of ATNLDA and future study plan were also discussed.
机译:本文介绍了基于共现和潜在狄利克雷分配(LDA)的主题分析在干细胞相关文献研究中的应用。鉴于LDA中参数估计的不足,本研究将共现理论和聚类判断指标进行了整合,并构建了用于主题分割的ATNLDA(自动主题编号LDA)模型。接下来,ATNLDA用于确定PubMed中2006年至2011年的干细胞研究文献的最佳主题数,然后将其用于干细胞数据集中研究内容的主题细分。获得干细胞研究主题后,对它们进行了分析。主题标签,主题研究内容以及主题之间的相互关系。结果证明,ATNLDA在干细胞文献研究中的主题分割中的应用是有效可行的。还讨论了ATNLDA的当前缺陷和未来的研究计划。

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