Meta-stars: multidimensional modeling for social business intelligence

E. Gallinucci, M. Golfarelli, S. Rizzi
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引用次数: 24

Abstract

Social business intelligence is the discipline of combining corporate data with user-generated content (UGC) to let decision-makers improve their business based on the trends perceived from the environment. A key role in the analysis of textual UGC is played by topics, meant as specific concepts of interest within a subject area. To enable aggregations of topics at different levels, a topic hierarchy is to be defined. Some attempts have been made to address some of the peculiarities of topic hierarchies, but no comprehensive solution has been found so far. The approach we propose to model topic hierarchies in ROLAP systems is called meta-stars. Its basic idea is to use meta-modeling coupled with navigation tables and with traditional dimension tables: navigation tables support hierarchy instances with different lengths and with non-leaf facts, and allow different roll-up semantics to be explicitly annotated; meta-modeling enables hierarchy heterogeneity and dynamics to be accommodated; dimension tables are easily integrated with standard business hierarchies. After outlining a reference architecture for social business intelligence and describing the meta-star approach, we discuss its effectiveness and efficiency by showing its querying expressiveness and by presenting some experimental results for query performances.
元之星:社会商业智能的多维建模
社交商业智能是一门将企业数据与用户生成内容(UGC)结合起来,让决策者根据从环境中感知到的趋势来改进业务的学科。在文本UGC分析中,主题扮演着关键角色,即主题领域内的特定兴趣概念。为了支持不同级别的主题聚合,需要定义主题层次结构。已经做了一些尝试来解决主题层次结构的一些特性,但到目前为止还没有找到全面的解决方案。我们提出的在ROLAP系统中对主题层次结构建模的方法称为元星型。它的基本思想是将元建模与导航表和传统维度表结合使用:导航表支持具有不同长度和非叶事实的层次结构实例,并允许显式注释不同的上卷语义;元建模能够适应层次结构的异质性和动态性;维度表很容易与标准业务层次结构集成。在概述了社会商业智能的参考体系结构并描述了元星方法之后,我们通过展示其查询表达性和一些查询性能的实验结果来讨论其有效性和效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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