基于加权引文网络和P-Rank算法的优化排序方法

Jianzhong Jiang, Shen Xu, Lantao You
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引用次数: 0

摘要

评估科学论文一直是一项具有挑战性的任务,不断发展的引文网络使其变得更加困难。尽管有许多解决这一问题的尝试,但大多数现有的方法都没有考虑到引文网络中的链接关系,这往往会导致评估结果的偏差。为了克服这一限制,我们提出了一种优化排名算法,该算法利用P-Rank算法和加权引用网络来提供更准确的文章排名。该方法采用两个双曲正切函数来计算相应的文章年龄和被引次数,同时更新引文网络中每个论文节点的链接关系。我们使用三个评估指标验证了所提出方法的有效性,并在三个公共数据集上进行了实验。实验结果表明,与其他非加权排序算法相比,优化文章排序方法具有较好的性能。此外,我们注意到,最佳的Spearman等级相关性和稳健性都可以通过使用以下参数的组合来实现:α = 10, β = 5, γ = 2。
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An Optimization Ranking Approach Based on Weighted Citation Networks and P-Rank Algorithm
Evaluating scientific articles has always been a challenging task, made even more difficult by the constantly evolving citation networks. Despite numerous attempts at solving this problem, most existing approaches fail to consider the link relationships within the citation network, which can often result in biased evaluation results. To overcome this limitation, we present an optimization ranking algorithm that leverages the P-Rank algorithm and weighted citation networks to provide a more accurate article ranking. The proposed approach employs two hyperbolic tangent functions to calculate the corresponding age of articles and the number of citations, while also updating the link relationships of each paper node in the citation network. We validate the effectiveness of the proposed approach using three evaluation indicators and conduct experiments on three public datasets. The obtained experimental results demonstrate that the optimization article ranking method can achieve competitive performance when compared to other unweighted ranking algorithms. In addition, we note that the optimal Spearman’s rank correlation and robustness can all be achieved by using a combination of the following parameters: α = 10 , β = 5 , and γ = 2 .
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