二部网络中缺失链接的视觉分析

Jian Zhao, Maoyuan Sun, Francine Chen, Patrick Chiu
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引用次数: 11

摘要

二部网络的分析在许多应用领域都是至关重要的,例如在智能分析中探索实体共现,在生物信息学中研究基因表达。一个重要的任务是缺失链接预测,它根据当前观察到的链接推断出未见链接的存在。在本文中,我们提出了MissBiN,它涉及到分析人员在循环中理解链接预测结果。MissBiN结合了一种新颖的链接预测方法和用于检查和理解算法输出的交互式可视化。此外,我们进行了定量实验来评估所提出的链接预测算法的性能,并进行了案例研究来评估MissBiN的整体有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MissBiN: Visual Analysis of Missing Links in Bipartite Networks
The analysis of bipartite networks is critical in a variety of application domains, such as exploring entity co-occurrences in intelligence analysis and investigating gene expression in bio-informatics. One important task is missing link prediction, which infers the existence of unseen links based on currently observed ones. In this paper, we propose MissBiN that involves analysts in the loop for making sense of link prediction results. MissBiN combines a novel method for link prediction and an interactive visualization for examining and understanding the algorithm outputs. Further, we conducted quantitative experiments to assess the performance of the proposed link prediction algorithm and a case study to evaluate the overall effectiveness of MissBiN.
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