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An evolutionary non-linear ranking algorithm for ranking scientific collaborations

机译:一种进化非线性排名算法,用于排名科学合作

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摘要

The social capital theory motivates some researchers to apply link-based ranking algorithms (e.g. PageRank) to compute the fitness level of a scholar for collaborating with other scholars on a set of skills. These algorithms are executed on the collaboration network of scholars and assign a score to each scholar based on the scores of his/her neighbors by solving a linear system in an iterative way. In this paper, we propose a new ranking algorithm by focusing on link-aggregation function and transition matrix. The evolution strategy technique is applied to find the best aggregation function and transition matrix for computing the score of a scholar in the collaboration network which is modeled by a hypergraph. Experiments conducted on two datasets gathered from ScivalExpert and VIVO show that the new non-linear ranking algorithm acts better than the other iterative ranking approaches for ranking scientific collaborations.
机译:社会资本理论促使一些研究人员应用基于链接的排名算法(例如PageRank)来计算学者的健身水平,以便在一系列技能上与其他学者合作。 这些算法在学者协作网络上执行,并根据以迭代方式求解线性系统,根据他/她的邻居的分数为每个学者分配分数。 在本文中,我们通过专注于链路聚合函数和转换矩阵来提出一种新的排名算法。 应用进化策略技术用于找到最佳聚合函数和转换矩阵,用于计算由超图建模的协作网络中的学者的分数。 在由Scivalexpert和Vivo收集的两个数据集上进行的实验表明,新的非线性排名算法的作用于排名科学合作的其他迭代排名方法。

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