成对比较
计算机科学
稳健性(进化)
链接(几何体)
单纯形
简单复形
机器学习
人工智能
数据挖掘
理论计算机科学
数学
计算机网络
生物化学
化学
几何学
纯数学
基因
作者
Bo Liu,Rongmei Yang,Linyuan Lü
出处
期刊:Chaos
[American Institute of Physics]
日期:2023-08-01
卷期号:33 (8)
被引量:6
摘要
Link prediction has been widely studied as an important research direction. Higher-order link prediction has gained, in particular, significant attention since higher-order networks provide a more accurate description of real-world complex systems. However, higher-order networks contain more complex information than traditional pairwise networks, making the prediction of higher-order links a formidable challenging task. Recently, researchers have discovered that local features have advantages over long-range features in higher-order link prediction. Therefore, it is necessary to develop more efficient and concise higher-order link prediction algorithms based on local features. In this paper, we proposed two similarity metrics via local information, simplicial decomposition weight and closed ratio weight, to predict possible future higher-order interactions (simplices) in simplicial networks. These two algorithms capture local higher-order information at two aspects: simplex decomposition and cliques' state (closed or open). We tested their performance in eight empirical simplicial networks, and the results show that our proposed metrics outperform other benchmarks in predicting third-order and fourth-order interactions (simplices) in most cases. In addition, we explore the robustness of the proposed algorithms, and the results suggest that the performance of these novel algorithms is advanced under different sizes of training sets.
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