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首页> 外文期刊>IEEE Transactions on Knowledge and Data Engineering >Detecting Communities with Multiplex Semantics by Distinguishing Background, General, and Specialized Topics
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Detecting Communities with Multiplex Semantics by Distinguishing Background, General, and Specialized Topics

机译:通过区分背景,一般和专门的主题检测与多路复用语义的社区

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摘要

Finding semantic communities using network topology and contents together is a hot topic in community detection. Existing methods often use word attributes in an indiscriminate way to help finding communities. Through analysis we find that, words in networked contents often embody a hierarchical semantic structure. Some words reflect a background topic of the whole network with all communities, some imply the high-level general topic covering several topic-related communities, and some imply the high-resolution specialized topic to describe each community. Ignoring such semantic structures often leads to defects in depicting networked contents where deep semantics are not fully utilized. To solve this problem, we propose a new Bayesian probabilistic model. By distinguishing words from either a background topic or some two-level topics (i.e., general and specialized topics), this model not only better utilizes the networked contents to help finding communities, but also provides a clearer multiplex semantic community interpretation. We then give an efficient variational algorithm for model inference. The superiority of this new approach is demonstrated by comparing with ten state-of-the-art methods on nine real networks and an artificial benchmark. A case study is further provided to show its strong ability in deep semantic interpretation of communities.
机译:使用网络拓扑和内容在一起发现语义社区是社区检测中的热门话题。现有方法通常以不分青红皂白地的方式使用Word属性来帮助查找社区。通过分析,我们发现,网络内容中的单词通常体现了分层语义结构。有些词语反映了所有社区的整个网络的背景主题,一些暗示了覆盖多个与主题相关的社区的高级常规主题,有些暗示了解每个社区的高分辨率专门主题。忽略这种语义结构通常导致描绘未充分利用深度语义的网络内容来导致缺陷。为了解决这个问题,我们提出了一种新的贝叶斯概率模型。通过将单词与背景主题或一些两级主题(即,一般和专门的主题)区分开来,该模型不仅可以更好地利用网络内容来帮助查找社区,而且还提供更清晰的多路复用语义社区解释。然后,我们为模型推断提供了有效的变分算法。通过与九个真实网络和人工基准的十种最先进的方法进行比较,证明了这种新方法的优势。进一步提供案例研究以表明其对社区深度语义解释的强大能力。

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