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Interactive mining of diverse social entities

机译:互动挖掘各种社会实体

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摘要

In this article, we propose and experimentally assess DiSE-growth, which is a tree-based (pattern-growth) algorithm for mining Diverse Social Entities. Our algorithm makes use of a specialized data structure, called DiSE-tree, for effectively and efficiently representing relevant information on diverse social entities while successfully supporting the mining phase. Diverse entities are popular in a wide spectrum of application scenarios, ranging from linked Web data to Semantic Web and social networks. In all these real-life application scenarios, it has become important to analyze high volumes of valuable linked data and discover those diverse social entities spanning over multiple domains in the entire social network (or some social network analyst-focused portions of the network). Moreover, we also extend our algorithm to handle cases where the analysts interactively change their social network mining parameters (e.g., incrementally expanding or narrowing the analyst-focused portions of social networks in which social network mining is conducted). Furthermore, we complement our analytical contributions by means of an empirical evaluation that clearly shows the benefits of our interactive tree-based mining of diverse social entities.
机译:在本文中,我们提出并通过实验评估DiSE增长,这是一种用于挖掘各种社会实体的基于树的(模式增长)算法。我们的算法利用称为DiSE-tree的专用数据结构来有效地表示各种社会实体上的相关信息,同时成功地支持挖掘阶段。从链接的Web数据到语义Web和社交网络,各种各样的实体在广泛的应用场景中很流行。在所有这些现实应用场景中,分析大量有价值的链接数据并发现跨越整个社交网络(或某些社交网络分析师关注的部分)中多个域的那些多样化的社交实体变得至关重要。此外,我们还扩展了算法,以处理分析师以交互方式更改其社交网络挖掘参数的情况(例如,逐步扩展或缩小进行社交网络挖掘的社交网络的以分析师为中心的部分)。此外,我们通过经验评估来补充我们的分析贡献,该评估清楚地表明了我们对不同社会实体进行基于树的交互式挖掘的好处。

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