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Adaptive Community Identification on Semantic Social Networks with Contextual Synchronization: An Empirical Study

机译:语义社交网络与语境同步的自适应社区识别:实证研究

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To support prompt collaborations, an ontology-based social network platform has been proposed to find the most relevant users by context representation (i.e., personal and group contexts) and matching. Consequently, groups can be dynamically organized with respect to the similarities among the personal contexts by context synchronization. Individual users can engage in complex collaborations related to multiple semantics, In this paper, we want to show and discuss the experimental results collected from a collaborative information searching system with context synchronization. Main empirical issues are i) setting thresholds, ii) searching performance, and in) scalability testing.
机译:为了支持迅速的合作,已经提出了一种基于本体的社交网络平台,以通过上下文表示(即个人和组上下文)和匹配来找到最相关的用户。因此,通过上下文同步可以相对于个人上下文之间的相似性动态地组织组。个人用户可以参与与多语义相关的复杂合作,本文我们想显示和讨论从具有上下文同步的协同信息搜索系统中收集的实验结果。主要经验问题是i)设置阈值,ii)搜索性能和in)可扩展性测试。

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