基于研究绩效和研究兴趣与隶属关系相似性的合作作者网络监督链接预测

D. Hassan
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引用次数: 0

摘要

预测学术社交网络中作者之间未来研究合作的出现是证明链接预测问题的一个非常有效的例子。该问题是指预测社交网络(SN)中一对节点之间可能存在或不存在链接的问题。由于以往的链路预测研究大多只考虑从SN结构中提取的预测变量(即特征),因此本文旨在研究使用其他类型的预测变量对解决合著网络中链路预测问题的影响。本文提出了一种新的合作作者网络监督链接预测方法,该方法通过计算网络中每个作者节点的研究兴趣之间的相似度、从属关系之间的相似度、研究绩效指标的总和以及两个作者节点之间的相似度来提取预测因子。我们的方法的初步结果表明,两个作者节点的研究绩效指标的总和对监督链接预测的性能影响最大,这激励我们对使用这种预测器进行进一步的分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Supervised Link Prediction in Co-Authorship Networks Based on Research Performance and Similarity of Research Interests and Affiliations
Predicting the emergence of future research collaborations between authors in academic social network is a very effective example that demonstrates the link prediction problem. This problem refers to predicting the potential existence or absence of link between a pair of nodes in social networks (SN). Since the majority of previous research work on link prediction only considered predictor variables (i.e., features) extracted from SN structure, this paper aims to investigate the impact of using other types of predictor variables on solving link prediction problem in co-authorship network. It proposes a new method for supervised link prediction in co-authorship networks using predictors extracted by: computing the similarity between the research interests of each two author nodes in the network, the similarity between their affiliations, the sum of their research performance indices as well as the similarity between the two author nodes themselves. The preliminary results of our approach show that the sum of research performance indices of two author nodes has the most impact on the performance of supervised link prediction which motivates us to do further analysis on using such a predictor.
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