Analytical explorations on complex networks and cubes (i.e., multi-dimensional datasets) are currently two separate research fields with different strategies. To gain more insights into cube dynamics via unique network-domain methodologies and to obtain abundant synthetic networks, we need a transformation approach from cubes into associated networks. To this end, we propose FGM, a fast generic model converting cubes into interrelated networks, whereby samples are remodeled into nodes and network dynamics are guided under the concept of nearest-neighbor searching. Through comparison with previous models, we show that FGM can cost-efficiently generate networks exhibiting typical patterns more closely aligned to factual networks, such as more authentic degree distribution, power-law average nearest-neighbor degree dependency, and the influence decay phenomenon we consider vital for networks. Furthermore, we evaluate the networks that FGM generates through various cubes. Results show that FGM is resilient to input perturbations, producing networks with consistent fine properties.
翻译:分析探索复杂网络和立方体(即多维数据集)目前是两个分开的研究领域,它们具有不同的策略。为了通过独特的网络域方法获得有关立方体动态的更多见解,并获得丰富的合成网络,我们需要将立方体转化为相关网络的转换方法。为此,我们提出了FGM,一种快速的通用模型,将立方体转化为相互关联的网络,其中样本被重新建模为节点,网络动态在最近邻搜索的概念指导下进行。通过与以前模型的比较,我们表明FGM可以成本高效地生成更接近实际网络的典型模式,如更真实的度分布、幂律平均最近邻度依赖性和我们认为对网络至关重要的影响衰减现象。此外,我们通过各种立方体评估FGM生成的网络。结果表明,FGM对输入扰动具有韧性,产生具有一致细节属性的网络。