计算机科学
多路复用
多样性(控制论)
图形
理论计算机科学
图层(电子)
人工智能
简单(哲学)
生物信息学
哲学
化学
有机化学
认识论
生物
作者
Daniel Kaiser,Siddharth Patwardhan,Minsuk Kim,Filippo Radicchi
出处
期刊:Physical review
日期:2024-02-26
卷期号:109 (2)
被引量:1
标识
DOI:10.1103/physreve.109.024313
摘要
Multiplex networks are collections of networks with identical nodes but distinct layers of edges. They are genuine representations of a large variety of real systems whose elements interact in multiple fashions or flavors. However, multiplex networks are not always simple to observe in the real world; often, only partial information on the layer structure of the networks is available, whereas the remaining information is in the form of aggregated, single-layer networks. Recent works have proposed solutions to the problem of reconstructing the hidden multiplexity of single-layer networks using tools proper for network science. Here, we develop a machine-learning framework that takes advantage of graph embeddings, i.e., representations of networks in geometric space. We validate the framework in systematic experiments aimed at the reconstruction of synthetic and real-world multiplex networks, providing evidence that our proposed framework not only accomplishes its intended task, but often outperforms existing reconstruction techniques.
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