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A compound correlation model for disjoint literature-based knowledge discovery

机译:基于脱节文献的知识发现的复合相关模型

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Purpose - The algorithm of disjoint literature-based knowledge discovery provides a convenient, efficient and effective auxiliary method for scientific research. Based on an analysis of Swanson's A-B-C model of disjoint literature-based knowledge discovery and Gordon's intermediate literature theory, this paper seeks to propose a more comprehensive compound correlation model for disjoint literature-based knowledge discovery. Design/methodology/approach - A new algorithm of vector space model (VSM) based disjoint literature-based knowledge discovery is designed to implement the compound correlation model. Findings - The validity tests showed that this new model not only simulated both of Swanson's early and well-known discoveries of Raynaud's disease-fish oil and migraine-magnesium connections successfully, but also applied to knowledge discovery in the agricultural economics literature in the Chinese language. Research limitations/implications - Although the workload was reduced to the minimum under the compound correlation model compared with other algorithms and models, part of the work needed some manual intervention in the process of disjoint literature-based knowledge discovery with the VSM-based compound correlation model. Practical implications - The algorithm was capable of knowledge discovery with a large-scale dataset and had an advantage in identifying a series of hidden connections among a set of literatures. Therefore, application of the model might be extended to more fields. Originality/value - Traditional two-step knowledge discovery procedures were integrated into the model, which contained open and closed disjoint literature-based knowledge discovery.
机译:目的-基于脱节文献的知识发现算法为科学研究提供了一种方便,高效,有效的辅助方法。在对基于不相关文献的知识发现的Swanson A-B-C模型和戈登的中间文献理论进行分析的基础上,本文旨在为基于不相关文献的知识发现提供更全面的复合相关模型。设计/方法/方法-基于向量空间模型(VSM)的基于不相交文献的知识发现的新算法旨在实现复合相关模型。研究结果-有效性测试表明,该新模型不仅成功地模拟了斯旺森的早期发现和著名的雷诺病鱼油和偏头痛与镁之间的联系发现,而且还将其应用于中文农业经济学文献中的知识发现。研究局限/意义-尽管与其他算法和模型相比,在复合相关模型下工作量已减少到最小,但在基于VSM的复合相关的不连续文献知识发现过程中,部分工作需要一些人工干预模型。实际意义-该算法能够利用大规模数据集进行知识发现,并且在识别一组文献中的一系列隐藏连接方面具有优势。因此,该模型的应用可能会扩展到更多领域。原创性/价值-将传统的两步式知识发现程序集成到模型中,其中包含基于文献的开放式和封闭式不相交的知识发现。

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