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首页> 外文期刊>International Journal of Modern Physics, B. Condensed Matter Physics, Statistical Physics, Applied Physics >A multilayer network analysis of hashtags in twitter via co-occurrence and semantic links
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A multilayer network analysis of hashtags in twitter via co-occurrence and semantic links

机译:通过共同发生和语义链接多层网络分析Twitter中的HashTags

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Complex network studies, as an interdisciplinary framework, span a large variety of subjects including social media. In social networks, several mechanisms generate miscellaneous structures like friendship networks, mention networks, tag networks, etc. Focusing on tag networks (namely, hashtags in twitter), we made a two-layer analysis of tag networks from a massive dataset of Twitter entries. The first layer is constructed by converting the co-occurrences of these tags in a single entry (tweet) into links, while the second layer is constructed converting the semantic relations of the tags into links. We observed that the universal properties of the real networks like small-world property, clustering and power-law distributions in various network parameters are also evident in the multilayer network of hashtags. Moreover, we outlined that co-occurrences of hashtags in tweets are mostly coupled with semantic relations, whereas a small number of semantically unrelated, therefore random links reduce node separation and network diameter in the co-occurrence network layer. Together with the degree distributions, the power-law consistencies of degree difference, edge weight and cosine similarity distributions in both layers are also appealing forms of Zipf's law evident in nature.
机译:复杂的网络研究作为跨学科框架,跨越各种各样的科目,包括社交媒体。在社交网络中,若干机制生成友谊网络等杂项结构,提及网络,标签网络等。专注于标签网络(即Twitter中的HashTags),我们从Twitter条目的大规模数据集中进行了两层分析标签网络。第一层通过将单个条目(推文)中的这些标签转换为链路来构造第一层,而第二层被构造将标签的语义关系转换为链接。我们观察到,在多层网络的多层网络中,在多层网络中的小世界属性,聚类和幂律分布等实际网络的普遍属性也在多层网络中是显而易见的。此外,我们概述了推文中的HASHTAGS的共同发生大多数与语义关系相结合,而少量的语义无关,因此随机链路降低了共发生网络层中的节点分离和网络直径。与学位分布一起,两层中的程度差异,边缘重量和余弦相似性分布的权力常量也是ZIPF法的吸引人的形式。

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