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Ranking scientific articles based on bibliometric networks with a weighting scheme

机译:基于带有权重方案的文献计量网络对科学文章进行排名

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摘要

As the volume of scientific articles has grown rapidly over the last decades, evaluating their impact becomes critical for tracing valuable and significant research output. Many studies have proposed various ranking methods to estimate the prestige of academic papers using bibliometric methods. However, the weight of the links in bibliometric networks has been rarely considered for article ranking in existing literature. Such incomplete investigation in bibliometric methods could lead to biased ranking results. Therefore, a novel scientific article ranking algorithm, W-Rank, is introduced in this study proposing a weighting scheme. The scheme assigns weight to the links of citation network and authorship network by measuring citation relevance and author contribution. Combining the weighted bibliometric networks and a propagation algorithm, W-Rank is able to obtain article ranking results that are more reasonable than existing PageRank-based methods. Experiments are conducted on both arXiv hep-th and Microsoft Academic Graph datasets to verify the W-Rank and compare it with three renowned article ranking algorithms. Experimental results prove that the proposed weighting scheme assists the W-Rank in obtaining ranking results of higher accuracy and, in certain perspectives, outperforming the other algorithms. (C) 2019 Elsevier Ltd. All rights reserved.
机译:在过去的几十年中,随着科学论文的数量迅速增长,评估其影响对于追踪有价值的重要研究成果变得至关重要。许多研究提出了各种排名方法,以利用文献计量法来估计学术论文的声望。但是,文献索引网络中链接的权重很少被考虑用于现有文献中的文章排名。文献计量学方法中的这种不完全调查可能导致排名结果出现偏差。因此,本研究提出了一种新颖的科学文章排名算法W-Rank,提出了一种加权方案。该方案通过测量引用相关性和作者贡献来对引用网络和作者网络的链接分配权重。结合加权书目网络和传播算法,W-Rank能够获得比现有的基于PageRank的方法更合理的文章排名结果。在arXiv hep-th和Microsoft Academic Graph数据集上进行了实验,以验证W-Rank并将其与三种著名的文章排名算法进行比较。实验结果证明,所提出的加权方案有助于W-Rank获得更高的准确度排名结果,并且在某些方面优于其他算法。 (C)2019 Elsevier Ltd.保留所有权利。

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