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Which similarity measure to use in network analysis: Impact of sample size on phi correlation coefficient and Ochiai index

机译:在网络分析中使用的相似度措施:样本量对PHI相关系数和OChiai指数的影响

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摘要

Some networks are explicit where members make direct connections (e.g. Facebook network), whereas other networks are implicit (e.g. co-citation network) in which an edge between two nodes is inferred using a similarity index. Choosing the right index to infer connections in an implicit/inferred network is important because conclusions can be biased if a network does not represent true relationships. In this study, we compared two indexes: Phi Correlation Coefficient (PCC) and Ochiai Coefficient (Och) based on their sensitivity to the sample size of transactions from where the network is inferred. For demonstration, we used an implicit network, called a comorbidity network, developed from health records of 22.1 million patients. The networks were compared based on their overall topologies and node centralities. Results showed that the network formed using Och was more robust to the sample size than PCC. The network using Och followed a small-world topology irrespective of the sample size whereas the structure of a network using PCC was inconsistent. Regarding node centralities, the betweenness centrality was most affected by the sample size. Our results lead us to recommend Och over PCC.
机译:一些网络是明确的,成员制作直接连接(例如Facebook网络),而其他网络是隐含的(例如共有关网络),其中使用相似性指数推断出两个节点之间的边缘。选择正确的索引以在隐式/推断的网络中推断连接是重要的,因为如果网络不代表真实关系,则可以偏置结论。在这项研究中,我们比较了两种索引:PHI相关系数(PCC)和OChiaI系数(OCH),基于它们对从网络被推断的交易的样本大小的敏感性。对于演示,我们使用了一个被称为合并网络的隐式网络,从2210万患者的健康记录开发。基于其整体拓扑和节点集合进行比较网络。结果表明,使用OCH形成的网络比PCC更强大地对样品大小更加鲁棒。使用OCH的网络随后是一个小世界拓扑,而不管样品大小,使用PCC的网络结构不一致。关于节点集线,人们之间的性能受到样本大小的影响。我们的结果导致我们推荐OCH通过PCC。

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