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New highlights and a new centrality measure based on the Adapted PageRank Algorithm for urban networks

机译:基于自适应PageRank算法的城市网络新亮点和新中心度度量

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摘要

The Adapted PageRank Algorithm (APA) proposed by Agryzkov et al. provides us a method to establish a ranking of nodes in an urban network. We can say that it constitutes a centrality measure in urban networks, with the main characteristic that is able to consider the importance of data obtained from the urban networks in the process of computing the centrality of every node. Starting from the basic idea of this model, we modify the construction of the matrix used for the classification of the nodes in order of importance. In the APA model, the data matrix is constructed from the original idea of PageRank vector, given an equal chance to jump from one node to another, regardless of the topological distance between nodes. In the new model this idea is questioned. A new matrix with the data network is constructed so that now the data from neighboring nodes are considered more likely than data from the nodes that are farther away. In addition, this new algorithm has the characteristic that depends on a parameter α, which allows us to decide the importance attached, in the computation of the centrality, to the topology of the network and the amount of data associated with the node. Various numerical experiments with a network of very small size are performed to test the influence of the data associated with the nodes, depending always on the choice of the parameter α. Also we check the differences between the values produced by the original APA model and the new one. Finally, these measures are applied to a real urban network, in which we perform a visual comparison of the results produced by the various measures calculated from the algorithms studied.
机译:Agryzkov等人提出的自适应PageRank算法(APA)。为我们提供了一种建立城市网络中节点等级的方法。可以说,它构成了城市网络中的中心性度量,其主要特征是能够考虑从城市网络中获得的数据在计算每个节点的中心性过程中的重要性。从该模型的基本思想出发,我们按重要性顺序修改用于节点分类的矩阵的构造。在APA模型中,数据矩阵是根据PageRank向量的原始思想构造的,无论节点之间的拓扑距离如何,均具有从一个节点跳到另一个节点的相等机会。在新模型中,这一想法受到质疑。构造了一个带有数据网络的新矩阵,因此,与来自较远节点的数据相比,现在认为来自相邻节点的数据更有可能。另外,这种新算法具有取决于参数α的特性,该参数使我们能够确定在中心性计算中网络拓扑和与节点关联的数据量所附加的重要性。总是根据参数α的选择,使用非常小规模的网络进行各种数值实验,以测试与节点关联的数据的影响。我们还要检查原始APA模型和新模型所产生的值之间的差异。最后,将这些度量应用于实际的城市网络,在其中我们对通过研究算法计算出的各种度量产生的结果进行视觉比较。

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