A Framework to Analyze Social Tagging and Unstructured Data

Amjed Al-Thuhli, Mohammed Al-Badawi
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Abstract

The involvement of human interactions with business processes through Enterprise Social Networks improves organizations performance. However, Enterprise Social Networks consist of massive amount of data in form of structure and unstructured data. Therefore, finding valuable information from these types of data is a challenging issue. Nevertheless, with the annotation that are available in form of social tagging, some challenges have been resolved. In this paper, we investigate the problem of using social tagging in order to socialize organization business processes. Specifically, we present a framework to analyze social tagging and unstructured data that are generated by users to recommend tasks and activities of any type of business processes based on hybrid method of clustering and text classification. The framework uses k-means algorithm to cluster tags datasets and term frequency–inverse document frequency to weight user's documents. The experiment results performed on a real case study shows the efficiency of the framework after validates its accuracy.
分析社会标签和非结构化数据的框架
通过企业社会网络与业务流程进行人工交互可以提高组织的性能。然而,企业社交网络由大量的结构化和非结构化数据组成。因此,从这些类型的数据中找到有价值的信息是一个具有挑战性的问题。然而,有了社会标签形式的注释,一些挑战已经得到了解决。在本文中,我们研究了使用社会化标签来实现组织业务流程社会化的问题。具体来说,我们提出了一个框架来分析由用户生成的社会标签和非结构化数据,以推荐基于聚类和文本分类混合方法的任何类型业务流程的任务和活动。该框架使用k-means算法对数据集进行聚类,并使用术语频率逆文档频率对用户文档进行加权。通过实例分析,验证了该框架的准确性,验证了该框架的有效性。
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