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首页> 外文期刊>The Computer journal >Relative Assortativity Index: A Quantitative Metric to Assess the Impact of Link Prediction Techniques on Assortativity of Complex Networks
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Relative Assortativity Index: A Quantitative Metric to Assess the Impact of Link Prediction Techniques on Assortativity of Complex Networks

机译:相对assortity指标:评估链路预测技术对复杂网络的差异影响的定量度量

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摘要

We propose a quantitative metric (called relative assortativity index, RAI) to assess the extent with which a real-world network would become relatively more assortative due to link addition(s) using a link prediction technique. Our methodology is as follows: for a link prediction technique applied on a particular real-world network, we keep track of the assortativity index values incurred during the sequence of link additions until there is negligible change in the assortativity index values for successive link additions. We count the number of network instances for which the assortativity index after a link addition is greater or lower than the assortativity index prior to the link addition and refer to these counts as relative assortativity count and relative dissortativity count, respectively. RAI is computed as (relative assortativity count - relative dissortativity count) / (relative assortativity count + relative dissortativity count). We analyzed a suite of 80 real-world networks across different domains using 3 representative neighborhood-based link prediction techniques (Preferential attachment, Adamic Adar and Jaccard coefficients [JACs]). We observe the RAI values for the JAC technique to be positive and larger for several real-world networks, while most of the biological networks exhibited positive RAI values for all the three techniques.
机译:我们提出了定量指标(称为相对assorartity指数,RAI),以评估使用链路预测技术的链路添加的现实世界网络变得相对更具各种范围的程度。我们的方法如下:对于应用于特定的真实网络上的链路预测技术,我们跟踪在连杆添加序列期间发生的assortity指数值,直到连续链路添加的差异索引值可忽略不计。我们计算链路添加后的差异索引的网络实例数量大于或低于链路添加前的assortistivity索引,并将这些计数分别称为相对assortity计数和相对脱离性计数。 rai被计算为(相对assortory计数 - 相对脱离计数计数)/(相对assortity计数+相对脱离计数)。我们使用基于3个代表性邻域的链路预测技术(优先附加,adamicADAR和Jaccard系数[Jacs])分析了跨不同域的80个现实网络跨越不同域的套件。我们观察JAC技术的RAI值对于几个真实网络的阳性和更大,而大多数生物网络为所有三种技术表现出阳性RAI值。

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