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A novel complex network link prediction framework via combining mutual information with local naive Bayes

机译:通过将相互信息与当地天真贝叶斯相结合的新型复杂网络链路预测框架

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摘要

As an important research direction of complex networks and data mining, link prediction has attracted more and more scholars' attention. In the early research, the common neighbor is regarded as a key factor affecting the formation of links, and the prediction accuracy is improved by distinguishing the contribution of each common neighbor more accurately. However, there is a drawback that the interactions between common neighbors are ignored. Actually, it is not just the interactions between common neighbors, but all the interactions between neighbor sets contribute to the formation of links. Therefore, the core of this work is how to better quantify and balance the contributions caused by common neighbors and the interactions between neighbor sets, so as to improve the accuracy of prediction. Specifically, local naive Bayes and mutual information are utilized to quantify the influence of the two aspects, and an adjustable parameter is introduced to distinguish the two contributions in this paper. Subsequently, the mutual information-based local naive Bayes algorithm is proposed. Simulation experiments are conducted on 5 datasets belonging to different fields, and 9 indexes are utilized for comparison. Numerical simulation results verify the effectiveness of the proposed algorithm for improving link prediction performance. Published under license by AIP Publishing.
机译:作为复杂网络和数据挖掘的重要研究方向,链接预测吸引了越来越多的学者的注意。在早期研究中,公共邻居被认为是影响链路形成的关键因素,并且通过更准确地区分每个普通邻居的贡献来改善预测精度。但是,存在缺点,即普通邻居之间的相互作用被忽略。实际上,它不仅仅是常见邻居之间的交互,而且邻居集之间的所有相互作用都有助于形成链接。因此,这项工作的核心是如何更好地量化和平衡由常见邻居引起的贡献和邻居集之间的相互作用,从而提高预测的准确性。具体地,利用当地幼稚贝叶斯和互信息来量化两个方面的影响,并引入可调节参数以区分本文的两个贡献。随后,提出了基于相互信息的本地朴素贝叶斯算法。仿真实验在属于不同场的5个数据集上进行,并且使用9个索引进行比较。数值模拟结果验证了提高链路预测性能的提出算法的有效性。通过AIP发布根据许可发布。

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    《Chaos》 |2019年第12期|共21页
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  • 正文语种 eng
  • 中图分类 自然科学总论;
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