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Using Time Dependent Link Reduction to Improve the Efficiency of Topic Prediction in Co-Authorship Graphs

机译:使用时间依赖的链接减少来提高共同作者图中主题预测的效率

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摘要

One prominent task in graphs is property prediction, where a property of some of the graph's nodes is known and used to make predictions for those individuals for which this property is unknown. In this paper, we look at topic prediction for papers organized in a so-called co-authorship graph (CAG) where the individuals are scientific papers with links between them if they share some author. A CAG tends to have a large number of cliques, each formed by all the papers published by the same author. Thus, topic prediction in a CAG tends to be computationally expensive. We investigate in how far we can reduce this complexity without sacrificing the prediction quality by reducing the number of links in the CAG based on the papers' publication dates. We apply an inexpensive iterative neighbourhood's majority vote based algorithm to predict unknown topics based on the papers with known topics and the CAG's link structure. For three data sets, we evaluate our algorithm in terms of classification accuracy and computational time on both the full graph G and subgraphs of it. On substantially smaller subgraphs of G, our algorithm obtains classification accuracies that are similar to the results obtained on G, while achieving a reduction in execution time of up to one order of magnitude.
机译:图中的一项突出任务是属性预测,其中图的某些节点的属性是已知的,并用于对该属性未知的个体进行预测。在本文中,我们着眼于在所谓的共同作者图(CAG)中组织的论文的主题预测,其中个体是科学论文,如果他们共享某些作者,则它们之间具有联系。 CAG往往有大量集团,每个集团都是由同一位作者发表的所有论文组成的。因此,CAG中的主题预测趋向于在计算上昂贵。我们根据论文的发表日期,通过减少CAG中的链接数,研究了在不牺牲预测质量的情况下可以减少这种复杂性的程度。我们使用便宜的迭代社区基于多数投票的算法,根据已知主题的论文和CAG的链接结构,预测未知主题。对于三个数据集,我们在全图G及其子图上根据分类准确性和计算时间评估我们的算法。在G的较小子图上,我们的算法获得的分类精度与在G上获得的结果相似,同时将执行时间减少了一个数量级。

著录项

  • 来源
    《Complex networks》|2009年|173-184|共12页
  • 会议地点 Catania(IT);Catania(IT)
  • 作者单位

    Department of Computer Science, University of Bristol, UK;

    rnDepartment of Computer Science, University of Bristol, UK;

    rnDepartment of Computer Science, University of Bristol, UK;

  • 会议组织
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 人工智能理论;
  • 关键词

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