PageRank Computation for Higher-Order Networks

COMPLEX NETWORKS & THEIR APPLICATIONS X, VOL 1(2022)

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摘要
Higher-order networks are efficient representations of sequential data. Unlike the classic first-order network approach, they capture indirect dependencies between items composing the input sequences by the use of memory-nodes. We focus in this study on the variable-order network model introduced in [10,12]. Authors suggested that random-walk-based mining tools can be directly applied to these networks. We discuss the case of the PageRank measure. We show the existence of a bias due to the distribution of the number of representations of the items. We propose an adaptation of the PageRank model in order to correct it. Application on real-world data shows important differences in the achieved rankings.
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关键词
Higher-order networks, Sequential data, Random walks, PageRank
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