在博客网络上查找语义级前体

Telmo Menezes, Camille Roth, Jean-Philippe Cointet
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引用次数: 5

摘要

在这项工作中,我们研究了博客网络中参与者之间的语义级优先关系。我们的方法有两个步骤:一个在语义层面上识别讨论单元的过程,以及一个概率框架,根据博客到达这些讨论单元的顺序来估计博客之间的时间关系。我们提出了可用于构建语义级优先网络的二元前驱分数。从这些分数中,我们得到了全局的前驱分数和滞后分数。将二元前驱分数与URL链接进行比较,以表明我们估计的语义级时间关系是影响的一个指标。将全局得分与传统的链接度和PageRank指标进行比较,我们揭示了语义级时间行为与受欢迎程度之间的关系。我们表明,我们的方法揭示了网络的信息,这些信息不能单独从结构链接中获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Finding the semantic-level precursors on a blog network
In this work, we study semantic-level precedence relationships between participants in a blog network. Our methodology has two steps: a process to identify units of discussion at the semantic level and a probabilistic framework to estimate temporal relationships between blogs, in terms of the order in which they arrive at those units of discussion. We propose dyadic precursor scores that can be used to construct semantic-level precedence networks. From these scores, we derive global precursor and laggard scores. Dyadic precursor scores are compared with URL linking to show that the semantic-level temporal relationships we estimate are an indicator of influence. Global scores are compared to traditional link degree and PageRank metrics, and we uncover relationships between semantic-level temporal behaviour and popularity. We show that our method reveals information about the network that could not be obtained from structural links alone.
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